Knowledge-based Service for African Traditional
Herbal Medicine: A Hybrid Approach
Samuel Nii Odoi Devine
1
, Emmanuel Awuni Kolog
2
, Erkki Sutinen
3
and Ilari Sääksjärvi
4
1
Department of Information and Communication Technology, Presbyterian University College Ghana, Okwahu, Ghana
2
Department of Operations and Management Information Systems, University of Ghana Business School, Accra, Ghana
3
Department of Future Technologies, University of Turku, Turku, Finland
4
Department of Biodiversity, University of Turku, Turku, Finland
Keywords: Knowledge-base, Information Retrieval, Ontology, Machine Learning, African Traditional Herbal Medicine.
Abstract: Globally, the acceptance and use of herbal and traditional medicine is on the rise. Africa, especially Ghana,
has its populace resorting to African Traditional Herbal Medicine (ATHMed) for their healthcare needs due
to its potency and accessibility. However, the practice involving its preparation and administration has come
into question. Even more daunting is the poor and inadequate documentation covering the preservation and
retrieval of knowledge on ATHMed for long-term use, resulting in invaluable healthcare knowledge being
lost. Consequently, there is the need to adopt strategies to help curtail the loss of such healthcare knowledge,
for the benefit of ATHMed stakeholders in healthcare delivery, industry and academia. This paper proposes
a hybrid-based computational knowledge framework for the preservation and retrieval of traditional herbal
medicine. By the hybrid approach, the framework proposes the use of machine learning and ontology-based
techniques. While reviewing literature to reflect the existing challenges, this paper discusses current
technologies suited to approach them. This results in a framework that embodies an ontology driven
knowledge-based system operating on a semantically annotated corpus that delivers a contextual search
pattern, geared towards a formalized, explicit preservation and retrieval mechanism for safeguarding
ATHMed knowledge.
1 INTRODUCTION
The idea of providing treatment to ailments or
diseases has, over the years, seen various methods
being applied, with each having to show its own
potency and often attributed to a specific region or
country. The case of Ghana is not different as the use
of such methods is either orthodox or traditional.
Before the introduction of orthodox medicine, many
a Ghanaian took to the use of traditional herbal
treatments, of all sorts, to help cure all forms of
diseases. Still, the use of African traditional herbal
medicine (ATHMed) is widespread in Ghana, as an
estimated 70% of the population obtain healthcare
through traditional healers (Amoah et al., 2014),
especially with rural communities. Interestingly,
preference for traditional medicine is on the rise
worldwide (Frass et al., 2012; Zhang, 2004). The
preparation of ATHMed is often in various forms
with ingredients (herbs) and methods which are
usually in the keep of the practitioners.
Predominantly and habitually, this knowledge, as
classified by Nonaka and Takeuchi (1995), is tacit,
which does not suit the view of long-term use and
preservation of such valuable knowledge. Tacit
knowledge comprises of the skills, ideas and
experiences people possess, which are hard to access
and transfer (Chugh, 2018, p. 2), in this case the
ATHMed practitioners in Ghana. There are many
cases where in an attempt to remain relevant, herbal
practitioners (traditional healers and herbalist) pass
on the knowledge to only their close allies or families.
This often leads to the likelihood of such knowledge
being either lost or failing to be developed over time
(Amoah et al., 2014). In the case where the
knowledge is not shared at all, the practitioner
eventually dies with the knowledge. Furthermore, due
to the absence of proper documentation on the choice
selection of ingredients, methods of drug preparation
and administration, some ATHMed patrons often
doubt the efficacy of these medications. There have
been reported instances of misinformation and abuse
Devine, S., Kolog, E., Sutinen, E. and Sääksjärvi, I.
Knowledge-based Service for African Traditional Herbal Medicine: A Hybrid Approach.
DOI: 10.5220/0007946400450055
In Proceedings of the 11th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management (IC3K 2019), pages 45-55
ISBN: 978-989-758-382-7
Copyright
c
2019 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
45
of traditional health knowledge (Yeboah, 2000: p.
208) which poses negative consequences to the health
of ATHMed patrons. With these concerns, this study
seeks to develop a framework for preserving and
retrieving knowledge in traditional herbal medicine.
Throughout history, attempts and varying
approaches have been developed and implemented in
order to safeguard, as well as, disseminate
knowledge. This is to ensure posterity and present
benefit from works, acts, processes, information and
all relevant data that will help improve or maintain
personal to organizational development needs.
Knowledge is regarded as key to any organization’s
present and future growth, and competitive advantage
especially in the 21st century (Xue, 2017; Davenport
and Prusak, 1998), with its basis being often formed
by, but not limited to, data and information.
To help salvage and standardize such practices in
the area of ATHMed, the United Nations Millennium
Development Goals and the World Health
Organization (WHO) has recognise the need to
promote and support the development of traditional
herbal medicine by launching the Traditional
Medicine Strategy 20142023 (WHA62.13)
1
. Key
amongst its strategic objectives is "to build the
knowledge base for active management of
Traditional, complementary and integrative medicine
through appropriate national policies". In view of this
advocacy, these researchers propose a novel model
and knowledge-based framework using
computational ontologies and machine learning to
help in the preservation and retrieval of traditional
herbal medicines. In this paper, we have suggested a
framework fit for use in Medical Institutions of
Higher Education (IHE) and herbal businesses where
the knowledge of herbal medicine, sourced from
“deep smart” knowledge bearers, is imparted to
students who are, potentially, future herbal doctors.
2 BACKGROUND
2.1 Traditional Herbal Medicine
According to the World Health Organization (WHO),
traditional medicine deals with "knowledge, skill, and
practices based on the theories, beliefs, and
experiences indigenous to different cultures, whether
explicable or not, used in the maintenance of health
as well as in the prevention, diagnosis, improvement
1
http://www.who.int/traditional-complementary-integrati
ve-medicine/en/
or treatment of physical and mental illness" (WHO,
2018, p. 1). Herbal medicines also encompass "herbs,
herbal materials, herbal preparations and finished
herbal products that contain as active ingredients
parts of plants, or other plant materials, or
combinations" (WHO, 2018, p. 1).
The Government of Ghana realising such a need
has setup the Centre for Scientific Research into Plant
Medicine to lead the way in the preparation and
standardization of herbal medicine in Ghana (Amoah
et al., 2014). In recent times, attempts are being made
by Universities in Ghana to train pharmacists in the
area of indigenous African herbal medicine treatment.
Two universities, Kwame Nkrumah University of
Science and Technology and University of Ghana, are
currently offering degree programmes at the
undergraduate level and training programs in an
attempt to assist in formalizing the training of
professionals in herbal medicine. However, their
focus has mainly been to help curb the challenge
related to the Ghanaian traditional herbal medicine
practitioner’s accurate measurement of ingredients
for drug preparation with issues on quality. The
universities also strive to provide strategies for long-
term preservation, appropriate forms of
administration, and administering right dosage of
such herbal drugs. For instance, the University of
Ghana
2
in 2016 organized a 2-day face-to-face
training programme for manufacturers of herbal
products/food supplements, focusing on the
improvement of safety and efficacy, evaluation of
raw materials, toxicological assessment, quality and
standardization in Ghana. These interventions seek to
harness the potential of herbal medicine, providing
orthodox and scientific approaches to standardizing
and safeguarding the knowledge associated with it,
and the practices in applying medication. This
attempt also assists in documenting and preserving
practices and medications associated with African
traditional herbal medicines (ATHMed) which
hitherto was in the domain of the practitioner. Failure
to undertake such interventions would in the end lead
to loss of this indigenous yet efficient medicinal
approach (Boadu and Asase, 2017).
To address the problem, a computer-aided
approach is suggested. The applications of
information technologies have been experienced in
many fields of study and are described to be a viable,
sustainable mechanism for long-term storage
(preservation) and information sharing (retrieval)
2
https://www.ug.edu.gh/announcements/2-day-training-
programme-manufacturers-herbal-productsfood-
supplements
KMIS 2019 - 11th International Conference on Knowledge Management and Information Systems
46
resident in the domain of knowledge management. To
this end, a knowledge-based framework for
preserving and retrieving ATHMed in the service
pharmaceutical sector and assistive of formal learning
in Medical Institutions of Higher Education is
proposed. The framework provides a roadmap on
describing some key elements such as choice of
medicinal plants, relationship between them and the
associated diseases they seek to cure. This would
provide the base for preserving the knowledge of
traditional herbal medicine practitioners (formal and
informal), thus, the engineering of an African
Traditional Herbal Medicine ontology. This is geared
towards assisting in the efficient classification and
annotation of the knowledge of treatment in
traditional herbal medicine, in order to build the
relevant contextual relationship between ATHMed
remedies and their associated cures. The fulcrum of
designing such a retrieval mechanism is to enable
efficient access to the knowledge base (KB). A
software artefact developed based on the framework
is needed to test the adequacy and viability of the KB.
By this approach, the knowledge preservation of
ATHMed will aid in providing a formalized, explicit
repository for future pharmaceutical needs and formal
training.
2.2 Related Works in Knowledge-base
Archival
Since the 1990s, with the advent of computers,
knowledge management (KM) has been implemented
through software solutions. This is especially in the
employee training, based on well documented norms,
practices and personal know-how (tacit knowledge)
of other internal employees, so that sharing and
safeguarding knowledge can be efficiently done
(Davenport and Völpel, 2001; El Morr, 2010).
Extant literature has revealed that, preservation of
data and knowledge has been the focus of many
organizations since the integration of procedures to
manage and improve information assets has become
critical for competitive growth in the 21st century
(Xue, 2017). However, the preservation of
knowledge, especially tacit, is hard to transfer and
difficult to preserve (Mazour, 2006). By implication,
there is the need for a more robust, explicit and
systematic approach to capturing, classifying and
sharing such knowledge. The involvement of
computerization and various electronic-based
strategies also provide additional power to monitor
and manage electronic information (Davidavičienė
and Raudeliūnienė, 2010).
Ashkenas (2013) advocates that to sustain,
adequately formalize, explicitly define and ensure
continuity of institutional knowledge, information
technology, thus computational approaches, should
be adopted. In agreement, Panahi, Watson and
Partridge (2012) espouse that using computational
approaches are more effective and efficient than
verbal/oral or face-to-face approaches. As knowledge
sharing, which hinges on efficient knowledge
preservation (KP), particularly tacit knowledge, is
paramount and unavoidable (Sarkiunaite and
Kriksciuniene, 2005), this paper proposes a hybrid
approach to KB implementation for ATHMed, based
on prior approaches adopted in other related fields.
Efficient and accurate retrieval of knowledge is
heavily dependent on how it is stored, herein,
preservation. The relevance and critical role of
knowledge preservation cannot be downplayed as it
drives the very essence of continuous learning and
improvement for posterity (Faust, 2007).
Knowledge preservation can be viewed as
“a process for maintaining knowledge important
to an organization’s mission that stores
knowledge/information over time and provides the
possibility of recall for the future” (Mazour, 2006: p.
2). Probst et al., (2006) also argue that the processes
of KP are covered in three stages: select, store,
actualize. In an extensive review undertaken by
Antonova et al., (2006) on technology solutions for
KM, the researchers explored numerous approaches
employed within the domain. Antonova et al., (2006)
detail notable technological solutions in managing
knowledge by classifying them based on the key KM
processes encompassing: generation’, ‘storing,
codification and representation’, ‘transformation
and use’ and ‘transfer, sharing, retrieval, access and
search’. This paper discusses KP and retrieval,
focusing on storage, codification and representation
of knowledge (Antonova et al., 2006), considering
KP as a purposeful, articulate, and explicit activity
that involves the safeguarding of knowledge,
especially tacit knowledge, for efficient storage,
retrieval, use and dissemination.
Over the years, there has been a study migration
from merely employing information system strategies
that mainly focused on transaction processing,
process controls and assisting in decision making, to
the efficient capturing and dissemination of
interrelated knowledge. This shift has become a vital
component to many an organization’s operations.
This focus seeks to guarantee the future success and
sustenance of organizations, using relevant,
progressive and adaptive computational approaches.
Mazour (2006) emphasizes that documentation,
Knowledge-based Service for African Traditional Herbal Medicine: A Hybrid Approach
47
hitherto preservation, is a “good meansto “articulate
knowledge” and though knowledge (tacit)
preservation and retrieval involves extensive effort,
its benefit is undeniably vast.
Based on the classification proposed by Probst et
al. (2006) for tacit knowledge preservation processes,
Davidaviciene and Raudeliuniene (2010), in an
extended work, identified ICT tools that implement
the KP process. The implementation is carried out
through capturing systems (expert systems, chat
groups, wikis, blogs, podcasting, best practices and
lessons learned databases, computer based
communication, computer based simulation) and
sharing systems (team collaboration tools, wikis,
blogs, podcasting, web-based access to data,
databases, best practice databases, lessons learned
systems and expertise locator systems)
(Davidaviciene and Raudeliuniene, 2010).
Antonova et al., (2006) catalogued technological
solutions for storage of knowledge assets into
databases, knowledge bases, data warehouses and
knowledge warehouses, data marts and data
repositories. With regards to knowledge codification
and representation, case-based reasoning systems,
rule-based approaches, frame and semantic nets as
well as formal logical, production and procedural
model approaches are engaged (Antonova et al.,
2006). Antonova et al. (2006) further postulate that
for retrieval to be easily facilitated, knowledge
organization technologies which include directories,
taxonomies and repository indexes must be adopted.
This suggests the adoption of ontology-based design
specifications. In addition to these technologies for
knowledge storage and representation, topic and skill
maps, and controlled vocabularies, structured as data
dictionaries can be applied (Antonova et al., 2006).
Presently, research leans towards contextual
semantic preservation of knowledge assets using
semantic enabling technologies such as XML. The
use of XML has aided the provision of interrelated
pattern search in a platform-independent
environment, as evident in the web environment.
Other studies have indicated the integration of natural
language processing (NLP) techniques to provide
linguistic semantic analysis and pattern related search
and retrieval of knowledge (Tomai and Spanaki,
2005). Additionally, machine learning techniques for
intuitive extraction of knowledge is being adopted.
As earlier espoused, KB development related
literature indicates focus towards intuitive, robust,
platform-independent, metadata dependent,
semantically driven, contextual domain-based
knowledge modelling, reasoning, preservation and
extraction systems. A number of these computational
approaches have been explored and adopted over the
years.
In their study, Li, et al., (2003) investigated the
feasibility of adopting an ontology-based approach to
supporting KM activities in the metal industry in
Taiwan. The researchers argue that, though this
approach is an “adequate methodology” for domain
specific KM, it is rather involving and time-
consuming. To this end, an ontology-based KMS was
modelled, using KAON for building the ontology and
Java 2 Enterprise Edition (J2EE) for the system in a
web-based environment.
Similarly, Tomai and Spanaki (2005) adopted the
use of ontologies to propose a framework for
modelling robust geographic concepts. However,
they utilized NLP approaches for linguistic semantic
analysis of the knowledge in the KB. To enable data
be appropriately tagged, in context, the metadata
handling and description language, Web Ontology
Language (OWL) full was used. This enabled the
application of W3C specification tools, thus
supporting Extensible Markup Language
(XML)/XML Schema and Resource Definition
Framework (RDF)/RDF Schema. A web-based
environment for user interaction with the KB was also
adopted, built on the .ASP format, and tested in an
intranet.
Lin, et al., (2013) also addressed the challenge of
tackling environmental protection concerns in the
product development process, through an eco-design
approach, using a Life Cycle Assessment (LCA)
strategy. The researchers presented an ontology-
based process-oriented framework as the
underpinning strategy to address the problem, with
Protégé as the tool for building the ontology. A
reasoning engine was formed to establish an
ontology-based knowledge decision support system
by transforming the knowledge acquired into a
linguistic information, fit for OWL and Semantic
Web Rule Language (SWRL), using the Java Expert
System Shell (Jess).
In the aerospace industry domain, Sanya and
Shehab (2014) propose a novel approach towards the
development of a KB engineering framework for
implementing platform-independent knowledge-
enabled product design systems. With the aim of
achieving long-term preservation of knowledge on
engineering, their framework targeted a cost-
effective, reasonable, model-driven architecture, also
using an ontology-based approach that renders a
semantic and portable knowledge structuring system.
OWL and SWRL were used to model the KB system,
Java for the CAD interface and Jess was used for the
inference engine.
KMIS 2019 - 11th International Conference on Knowledge Management and Information Systems
48
Song et al., (2016) explored a 3-tier system
architectural framework for KB systems
management of manufacturing process knowledge.
The researchers proposed an effective reusable
management approach to implementing their KB
system, via a systematic methodology for
constructing the KB, indicating the key role of
ontology development through an iterative process.
According to Shang et al., (2017), by employing a
vulnerability-centric ontology-based KB framework
strategy, cyber security knowledge existing in some
independent KBs and on the internet, in text form,
was efficiently integrated. This enabled the extraction
of cyber security knowledge using both rule-based
and machine learning information extraction
techniques.
From the literature reviewed, in addressing KM
needs, a systematic approach is to be adopted. The
approach should be dynamic, contextual, ontology-
based, AI-oriented, platform independent and
semantic in nature. This forms the basis of the design
and development approach adopted for this research.
3 METHODOLGY
This research is an ongoing study that adopts a design
science research process. In this section, we provide
the overview of the DSR process and the framework
for the implementation of the system.
3.1 Design Science Research
As part of this project, the development of the
knowledge-based system follows a design science
research (DSR) process. Peffers et al. (2006) DSR is
adopted as shown in Figure 1. DSR is one of the two
major paradigms in Information System research
(Hevner et al., 2004; Mramba et al., 2016) and is a
solution-oriented methodology that focuses on the
design and investigation of IT artefacts (Peffer et al.,
2006; Hevner et al., 2004). DSR seeks the systematic
and purposeful development of a solution (artefact)
based on a rigorous scientific process. It provides a
strategic mental model for empirical and theory
research building for contextual understanding,
evaluation and reproducibility of a study. The artefact
may take the form of a construct, model, method, or
an instantiation such as hardware or software (Hevner
et al., 2004).
For an Information Systems’ project such as this
study, Peffer et al., (2006) propose six common
design process elements that cover DSR methodology
in a nominal sequence: Problem Identification and
Motivation, Objectives of a Solution, Design and
Development, Demonstration, Evaluation and
Communication. This study takes a problem-centered
focus as its entry point. Consequently, the DSR
methodology is well suited for this research as our
aim is to develop an artefact that provides a formal
computational solution for safeguarding ATHMed
knowledge (Peffers et al., 2006). Subject to this
approach, stakeholders for this project will be
involved throughout the developmental stages as
shown in Figure 1. The idea is to co-create the
intended system with the stakeholders’ involvement.
This paper forms part of the initial phase of the
DSR framework. Based on the DSR’s initial phase,
this study identifies the gap in the knowledge
preservation and retrieval (KPR) practices within the
ATHMed domain. From literature, it is evident that
the KPR practices are inadequate with its
repercussion having been discussed in earlier sections.
The motivation therefore is to propose a framework
to assist in addressing the phenomenon. This will
require clearly defined requirements to help obtain
relevant information and guidelines needed for
identifying key concepts towards the KBS
development.
Of the requirements specified through active
stakeholders’ consultation, the artefact will be
designed and developed towards meeting the set
objectives. Four components of the artefact will be
materialized to provide a contextually fit and rigorous
solution. The artefacts are interdependent covering an
ATHMed Framework to guide the development
process, a formalized ontology, a corpus and a KBS.
The prototyping strategy shall be used to enable
stepwise involvement of stakeholders. As a proof of
concept, the KBS will undergo rigorous testing with
training data to demonstrate its ability and adequacy
to meet the objective for which the system was
designed for.
Subsequently, the output, efficiency and overall
performance of the artefact will be measured through
another stage of rigorous testing by stakeholders and
patrons of ATHMed. This will help in assessing the
veracity and efficacy of the KB and how usable the
KBS is. The feedback obtained will affirm system
adequacy and viability, as well as usability and user
satisfaction.
Knowledge-based Service for African Traditional Herbal Medicine: A Hybrid Approach
49
Figure 1: Design process with design science framework (Adopted from Peffers et al., 2006).
3.2 Knowledge-based Framework for
Traditional Herbal Medicine
To contribute to the building of a formally defined
body of knowledge in the domain of ATHMed
practice and training in Medical IHE, a conceptual
framework (model) is proposed. As such, defining a
semantic-oriented, lexically functional, syntactic
structure in a machine-readable and machine-
understandable language is the focus of this proposed
framework. The framework seeks to adopt and
incorporate two major Artificial Intelligence (AI)
techniques machine learning (ML) and ontology to
provide a progressively adaptive environment to
implement an intuitive KBS. Additionally, the
retrieval mechanism for users’ interaction is
facilitated using web and mobile technologies. The
proposed knowledge-based framework has three
components as shown in Figure 2: data layer, logic
layer and application layer. The system will be
designed by following the Model-View-Control
(MVC) software architecture. The Data Layer
implements the Model component, the Logic Layer
actualizes the Control component and the View
component is considered in the Application Layer.
3.2.1 The Data Layer
The data layer is comprised of the data (knowledge)
acquisition sub-component, which captures the
knowledge, and knowledge base, which stores the
knowledge obtained from the domain experts.
Data Processing
As earlier indicated, with the DSR, stakeholders in
the medical fraternity are involve in the actual
implementation. Therefore, the initial data (ATHMed
corpus) obtained from interacting with the
stakeholders (ATHMed practitioners and academia)
is to be pre-processed for easy annotation. This
processing is based on the elements relevant for
ingredient selection and processing, mode of
preparation and associated treatment (administration)
method. Through expert (experts from academia,
research institutions and registered herbal clinics)
annotation, a predefine annotation scheme for the
ATHMed data shall be arrived at. This will enable the
attainment of a good agreement score on what
element goes where, to obtain a concisely annotated
data for training a ML classifier. This will lead to a
gold standard being obtained, from the initial test
data, via a supervised machine learning technique.
During storage, which implements the
preservation phase, the data after pre-processing, is
run through a classifier for categorization into
specific non-static association and accurate
identification of the knowledge using a suitable ML
classifier. Throughout classification process, each
data value (or key words) will be tagged to enable
efficient association of term and concepts, via part-
of-speech tagging through lemmatization.
Literature in medical research involving the use
of ML suggests a diversity of techniques being
applied. Jiang et al., (2017) conducted a survey of AI
KMIS 2019 - 11th International Conference on Knowledge Management and Information Systems
50
application in healthcare. The researchers observed
that Support Vector Machine (SVM) and Artificial
Neural Networks (ANNs) were often used. In a
related study on biomedical disease detection,
Niharika and Kaushik (2018) concluded that different
ML classifiers should be considered to build a unified
hybrid framework. By this, to obtain optimal results,
they recommend the use of SVM, extreme learning
with variations of various swarm techniques.
Similarly, Bayesian Networks (BNs), ANNs and
SVM were identified as methods most frequently
applied in the THMed domain (Arji et al., 2018).
Consequently, to determine which ML algorithm
is most suited for the ATHMed classifier, an optimal
performance test shall be undertaken. This test shall
involve the use of notable machine learning software,
example WEKA. Based on the results, ML that
demonstrate superiority in classifying ATHMed data
will be chosen for the implementation.
Additionally, a robust algorithm to improve
classification of the ATHMed data shall be
considered. This is to directly influence the
performance of ontology model, through a novel
indexing approach, to facilitate quick retrieval.
The Ontology Model
The proposed knowledge base (KB) design is based
on an ontology, for extensibility and reusability. As
such, at the ontology construction phase, the proposed
ontology model is to be defined through the process
of organizing the ATHMed knowledge in categories,
type classification into classes, hierarchical
structuring of associated instances and properties,
with appropriate axioms, rules, restrictions and
interrelations. The ontology model is to be evaluated
to verify functional specifications thereby ensuring
consistency, reliability, accuracy and extensibility. A
further validation, involving verification and
evaluation tests for reliability (Preece, 1994) is
required to ascertain the performance capacity of the
KBS. This is to measure the quality of the ontology
by ensuring adequate coverage of the knowledge
within the ATHMed domain. The testing strategy for
the KB is tailored to conform to software
development test approaches.
The ontology-based approach is predominantly
novel yet extensive for knowledge engineering. It
facilitates appropriate representation, maintenance
and dissemination of knowledge, and thus relevant in
applying this approach in the ATHMed domain. The
proposed knowledge capturing/acquisition
component is targeted at being modelled based on a
standard medicine preparation template design focus,
under the guide of a domain expert (in academia) and
verified by experts (both academia and practitioners).
This shall require the use of knowledge and
metadata representation tools. An ontology authoring
tool such as Protégé shall be used for building the
ontology. XML and XML Schema is suitable for
defining the metadata description, structure and
storage, with RDF for describing related knowledge
resources prevalent on the web for interrelation
definition. OWL Descriptive Logic (DL) shall be
used for defining the ontology structure and necessary
semantics, and SPARQL to querying the ontology-
based knowledge-base. A classification of key
elements and concepts, with their interrelationships
shall be explored, defined and annotated. Appropriate
axioms shall be used to implement the guidelines for
building the ontology.
Through this approach, the proposed knowledge-
based system is certain in providing knowledge users
and ATHMed stakeholders with a computer-aided
solution that supports semantic capabilities. This will
facilitate relevant, contextual preservation and
retrieval of results from the knowledge base, through
a simplified search mechanism using a web portal or
mobile app.
3.2.2 The Logical Layer
This layer, as the middle layer, interacts with the data
layer where the knowledge is preserved and the
application layer, where requests from users are
submitted via queries. Thus, the reasoning module is
executed via the logic layer, tagged as the Information
Extraction Component (IE). The IE is implemented
via two sub-components: Machine Learning
Extractor and Semantic Reasoner.
Machine Learning Extractor
The information extraction component shall be used
as the means to extract or retrieve information from
the knowledge base. The IE constructed using two
sub-approaches involving a machine learning based
(ML-based) extraction algorithm and an inference
engine. The ML extractor will be designed to
complement the ontology, that possess features of the
ATHMed knowledge-based ontology, taking critical
considerations to class types, their relationships,
instances, connotations and semantics. The ML
extractor interacts with the inference engine built to
deduce new knowledge, thus from the data and
information present in the knowledge base (KB) to
ensure accurate prediction and determination of
Knowledge-based Service for African Traditional Herbal Medicine: A Hybrid Approach
51
appropriate treatment, association to ailment,
preparation methods and other relevant inferences.
Semantic Reasoner
The proposed knowledge-based system’s semantic
reasoner acts as the inference engine. The inference
engine structure is expected to work on the Java-
based framework, Apache Jena. ML techniques
mainly to improve efficiency of predictability,
deduction accuracy and an extensible deeper learning
approach shall be considered. This shall support
making of inferences whiles deducing new
knowledge in a contextual form. This requires that the
ML algorithm (classifier) chosen must be trained,
firstly on some rule-based approach before a well-
structured corpus for ATHMed is defined and
extended with the algorithm.
3.2.3 The Application Layer
As earlier mentioned, the application layer is the view
component, thus presentation layer for accessing the
KBS. In the wake of enhanced and fluid ways of
communication, there is the need to make access to
knowledge easy and quick, supported in an
interconnected, platform independent environment.
This requires employing technologies that are
ubiquitous and support use, anywhere and at anytime
with ease. Web-based and mobile technologies have
shown potential to be adaptive to such an
environment. The proposed KBS is targeted at
providing users with a graphical front-end: web-
based interface designed with J2EE technology and a
mobile interface using Android technology. Users
will pass queries through simple to expressive
statements which are treated as natural language
expressions. NLP techniques and tools are efficient to
support such manipulation. This requires that all
queries be analysed lexically, and semantically
compared against the KB through the information
extraction (IE) component. This is to facilitate the
extraction of relevant knowledge in the form required
for adequate interpretation and understanding to the
user. To this end, representation of the extracted
knowledge must be textual and visual where required.
Same interface shall be used to provide new
knowledge to the KB.
For optimal performance, thus reliability and
accuracy of the proposed KB, systematic engagement
of domain experts in designing and validating every
stage of the KBS is required. Below is a conceptual
design of the proposed ATHMed KB framework.
Figure 2: The Proposed knowledge-based framework for Achieving African traditional herbal medicine.
KMIS 2019 - 11th International Conference on Knowledge Management and Information Systems
52
4 DISCUSSION
Developing countries have about 80% of their
populace depending on THMed, with reports of rising
global demands, for their health needs (WHO, 2018;
Frass et al., 2012; Zhang, 2004). This is due to
THMed’s ease of use, natural form, often minimal
side effects, availability, affordability and ease of
preparation. Poorna, Mymoon and Hariharan (2014)
reported cases of countries pursuing knowledge
preservation and retrieval practices on traditional
knowledge, thus THMed. Their findings, indicate
strategic, meticulous efforts to safeguard THMed
knowledge, have yielded distinctive yet
collaboratively immense benefits. This result was
attained through an all-inclusive effort spanning the
health, academic and industry divide. Interestingly,
all 6 countries that were observed to be making strives
by implementing THMed documentation initiatives
were from developing nations. This reiterates the
importance of THMed to developing nations, and
African countries in particular.
In essence, the impact of pursuing such THMed
knowledge preservation and retrieval leads to key
benefits to countries especially in Africa. There are
obvious implications of healthcare benefits. It provides
economic benefits whiles promoting preservation of
indigenous cultural heritage (Boadu and Asase, 2017;
van Andel et al., 2015). It provides avenues for
securing patents to THMed knowledge (Zhang, 2004)
and protecting such knowledge against misuse
(Poorna, et al., 2014). These benefits were witnessed
amongst the 6 countries that were observed by Poorna,
Mymoon and Hariharan (2014). This was possible
through proper codification and documentation
(Poorna, Mymoon and Hariharan, 2014), a requisite
strongly advocated for, to facilitate preservation
(Faust, 2007; Mazour, 2006). This means that for
THMed knowledge to be preserved, a consistent and
purposeful effort is required. In addition, it is necessary
that all such knowledge captured are interlinked or
semantically correlated, to enable efficient search and
retrieval, in order to promote new discoveries in related
medicines and treatments.
Despite extant literature indicating growing
interest in herbal medicine usage, especially in
developing countries, most of these practices are
either not well preserved nor documented. The
evidence and dangers of THMed knowledge not
being properly and adequately transferred from one
bearer to another, to continue the medicinal practice
is well documented in literature. Instances of this
nature were observed by Adekannbi, et al., (2014).
The researchers indicate that, though some
practitioners of THMed willingly share their
knowledge with their assistants, they choose to
purposefully, deliberately and prudently transfer such
knowledge, comfortably with their own relations.
Notably, albeit some African countries are attempting
to safeguard THMed knowledge, it is predominantly
oral and being leisurely done using some form of
recording (Maluleka and Ngulube, 2018; Adekannbi,
et al., 2014; Yeboah, 2000). Consequently, a
knowledge bearer may teach in part resulting in half-
baked practitioners administering poor medical
practices which are likely to cause more harm than
good, as evidenced in some reports (Yeboah, 2000).
To help salvage the situation, deliberate calls and
attempts have been made, by academia and research
institutions worldwide, to help formalize and train
THMed professionals. As custodians, these
professionals will not only guide the processes and
procedures to the preparation, preservation and
administration of THMed, but also ensure the
knowledge is not lost (WHO, 2018; Boadu and Asase,
2017; Amoah et al., 2014; Poorna, et al., 2014).
Additionally, this effort is to assist in safeguarding
such vital knowledge which can be extracted and
refined for further commercialization in the service
industry. Key to benefiting from this are researchers
and academia, in general, via extending studies into
the viability of such medicines and the development
of appropriate curricula in the training of qualified
herbal medicinal practitioners and healthcare
professionals who will ensure continuity and
formalization of THMed practices in Higher Learning
Institutions. The resulting output from academia will
feed the pharmaceutical industry with the requisite
knowledge on THMed. Causally, it will provide
opportunities for job creation while sustaining
economies of countries that depend predominantly on
THMed for providing healthcare to their indigenes.
Ultimately, the effort will assist in improving socio-
economic livelihoods and sustaining biological
resources at the same time. The overall effect shall be
to the advantage of the general populace with regards
to the provision of relevant information on what
choice of THMed medication to resort to in servicing
their medical needs. The study conducted by Poorna,
et al., (2014) supports these claims. In their study, it
was revealed that countries that pursued preservation
of THMed knowledge benefited not only to safeguard
such knowledge, but also inherently promoted saving
and securing patent to these national assets.
The provision of improved, timely, accessible and
affordable healthcare through the offering of
alternative healthcare practices based on a formalized
THMed knowledge-based Framework is the
Knowledge-based Service for African Traditional Herbal Medicine: A Hybrid Approach
53
underlining motivation proposed in this paper. The
expected impact will not only be for developing
countries like Ghana, but all regions that value and
access healthcare through THMed.
The proposed framework is geared towards
managing African traditional herbal medicine
(ATHMed) knowledge, focusing on its relevance in
the Ghanaian pharmaceutical service sector and the
medical institutions of higher education context,
seeking to deepen research at the national and global
level, as advocated by Xu et al. (2008). The
framework falls in the domain of KM processes
covering technologies, related tools, appropriate
methods and general KM involving frameworks.
Furthermore, the proposed framework seeks to add to
the KM body of knowledge, by contributing to the
delivery and improvement of quality healthcare (El
Morr and Subercaze, 2010). This, we hope, will
extend knowledge in ATHMed and contribute in
answering the call for preserving such indigenous
medicinal practices (WHO, 2018).
5 CONCLUSION AND FUTURE
WORK
The premise and prospects of this work is based on
the articulation of formalized processes that are
expected to yield a structured computer science
approach to assist in preserving and retrieving
relevant data and information on African Traditional
Herbal Medicine, progressively, efficiently and
sustainably, using novel approaches.
A hybrid approach of adopting machine learning
techniques and an ontology framework is presented.
This is geared towards addressing issues related to
developing an efficient knowledge-based system
(KBS), that provides a formal, explicit preservation
and retrieval mechanism of ATHMed leading to a
well-defined body of ATHMed knowledge.
This paper is considerably a working paper,
requiring further empirical studies to concretize and
affirm the veracity and viability of the framework. In
this regard, further research will focus on the design
of an ontology, based on ATHMed. Trailing this will
be the exploration of strategies to facilitate quick and
adept cataloging of data through an innovative search
pattern that employs a novel indexing approach to
storage and data retrieval, applicable to classifying
semantic data, thus an annotated corpus. Furthermore,
research into the adoption of machine learning
techniques tailored to suit annotated ATHMed
knowledge to provide a semantically-aware,
contextual knowledge base shall be pursued. The
research then culminates with an implementation of
the framework proposed and validation of the
ATHMed KBS.
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