Design a Predictive Analytics Model of Hospital Accreditation
Continuity from Employee Readiness based on Artificial Intelligence
Alimunir Gultom, Ermi Girsang, Sri Lestari R. Nasution
Faculty of Medical, Universitas Prima Indonesia, Indonesia
Keywords: Employee Readiness, Accreditation Continuity, Hospital.
Abstract: Hospitals are required to have an accreditation in an effort to improve the quality of health services. Some
employees feel accreditation is a workload and they are not ready to carry out the sustainability of hospital
accreditation. The purpose of this study is to design a predictive analytics model of hospital accreditation
continuity from employee readiness using support vector machine (SVM) method. The data were obtained
from a population of 230 employee with sample of 70 respondents. Statistically, measurement data from the
questionnaire was processed using univariate, bivariate with chi-square tests, and multivariate with multiple
logistic regression at a 95% confidence level ( = 0.05). For hospital application needs, measurement data
are modeled by the SVM method. The results showed that there was a relationship between readiness to
change, management support, and self-benefits to the sustainability of hospital accreditation p <0.05. The
variable that has the greatest relationship with the sustainability of hospital accreditation is management
support with the value Exp (B) / OR = 18.978. The results of predictive model between input and output
variables show significant success with an accuracy rate of 88.6%.
1 INTRODUCTION
Law Number 44 Year 2009 (regarding Hospitals)
Article 29 letter b states that hospitals are required to
provide safe, quality, anti-discrimination and
effective health services by prioritizing patient
interests in accordance with service standards. Then
in Article 40 paragraph (1) it is stated that in an effort
to improve the quality of hospital services,
accreditation must be carried out periodically at least
once every three years (Secretariat of the Republic of
Indonesia, 2009). Based on the aforementioned laws
hospital accreditation is important to be carried out on
the grounds that quality can be integrated and
cultivated into the service system.
Policies related to accreditation have been set in
the regulation of the minister of health number 34 of
2017 concerning accreditation and number 99 of 2015
concerning changes to the regulation of the minister
of health number 71 of 2013 concerning health
services on national health insurance. Accreditation is
an important requirement to be fulfilled by hospitals
because in addition to aiming to guarantee the quality
of health services to the community, it can also be
evidence that the hospital has a commitment to
provide plenary and standard services (Idris, 2019).
Internationally, accreditation is a widely adopted tool
for quality control and quality improvement in health
care . In accreditation, an external institution assesses
an organisation based on predefined quality standards
and after a formalsite visit by surveyors, the
accreditation body decides whether to grant
accreditation status to the organization (Due et al,
2019).
Accreditation programmes in developing
countries, especially in the Middle East, are rapidly
picking up pace, and numerous healthcare
organizations are becoming involved in enhancing
the quality of their healthcare by adopting such
programmes, thereby enhancing their reliability and
showing their commitment to improving quality of
care (Algunmeeyn et al, 2019). Through the
accreditation process, one of the benefits is to
increase public trust where hospitals focus on patient
safety and quality of service (Ministry of Health,
Republic of Indonesia, 2011). Developing countries
frequently use hospital accreditation to guarantee
quality and patient safety (Subashnie Devkaran and
Patrick O’Farrell, 2015). Imperfections found in
health services have caused so many people to use
health services in neighboring countries such as
Singapore and Malaysia (Leonarda, 2011).
96
Gultom, A., Girsang, E. and R. Nasution, S.
Design a Predictive Analytics Model of Hospital Accreditation Continuity from Employee Readiness based on Artificial Intelligence.
DOI: 10.5220/0010289300960103
In Proceedings of the International Conference on Health Informatics, Medical, Biological Engineering, and Pharmaceutical (HIMBEP 2020), pages 96-103
ISBN: 978-989-758-500-5
Copyright
c
2021 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved
Acreditation of primary care settings was shown
to strengthen quality control and improvement. Result
of study on the effectiveness of quality-improvement
in primary care showed management progress in the
practice that applied organizational standards (Alia
Ghareeb, Hana Saod and mohamad el zoghbi, 2018).
Hospital accreditation is widely adopted as a
visible measure of an organization’s quality and
safety management standards compliance. Hospital
accreditation programmes are avenues through which
a complex policy intervention functions to promote
adherence to quality and safety management
standards and drive continuous quality improvement
on a more practical level, these programmes represent
a quality management system (QMS), total quality
management (TQM) or continuous quality
improvement (CQI) standards that should lead to an
improvement of the hospital’s overall performance
(Wardhani et al, 2019).
In general, medical personnel assume that the
quality of service will be guaranteed to be good by
increasing the quality of the expertise of doctors with
continuous education and practice, and sophisticated
equipment (Azwar, 2015). However, the community
as service users, hospital managers, hospital owners,
and those who have direct or indirect interests in
hospital services can have a different opinion
(Leonarda, 2011).
Hariyono's research at Rajawali Citra General
Hospital in Bantul Regency stated that there were still
difficulties in the preparation of human resources
considering that the staff appointed to prepare the
accreditation device did not understand occupational
health safety science (Hariyono, 2013). According to
Algunmeeyn et al (2020) at Jordanian hospital that
The present study has explored the main obstacles to
implementing accreditation, based on responses from
a sample of hospital staff members (including nurses
and doctors): low wages and poor incentives, high
workload, the cost of accreditation implementation,
staff shortages, and high staff turnover. These barriers
should be addressed because they could impact on
accreditation in hospitals; negatively influencing the
quality of healthcare services and thereby incurring
serious problems.
Research conducted by Hariyono (2013) at
Rajawali Citra General Hospital in Bantul Regency
related to the analysis of readiness to face hospital
accreditation that readiness to change employees or
hospital employees is one of the factors that
encourage the sustainability of accreditation. There
are still difficulties in the preparation of hospital
human resources because the staff appointed to
prepare the accreditation tools do not understand
well. Research Mandawati et al. (2018) at KRT
Setjonegoro Wonosobo Hospital got the result that
nurses had a positive perception of accreditation and
were ready to change, besides that nurses also hoped
that the spirit of accreditation would not only be
limited to assessment.
Based on research Sembodo et al (2019) that an
Accreditation Status positively meaningful with
Service Quality, Service Quality is positively related
to Patient Satisfaction and there is a significant
positive relationship indirectly between Accreditation
Status and Patient Satisfaction. But the accreditation
results did not always directly improve the quality of
hospital services. This is because accreditation of
health services in Indonesia has not yet assessed the
clinical indicators of health services (Soepojo et al,
2012; Turnip et al, 2020; Wijaya et al, 2019 ).
Based on data from the Stella Maris Hospital in
Medan, there were 230 permanent staff consisting of
30 medical staff, 72 nurses, 54 midwives, 15
laboratory workers, 21 pharmacists, 10 nutrition
workers , radiology staffs as much as 2 people,
maintenance staff 11 people, medical records staff as
many as 3 people, administrative and administrative
staff as many as 12 people. To provide the best
service in carrying out operational activities for
people who come for treatment or delivery, the work
shifts are divided into 3 (three) shifts for operations
24 hours a day, while for administrative (office)
activities only consist of 1 (one) shift.
The preliminary survey was conducted by
interviewing 15 employees about services after
hospital accreditation: as many as 8 people said they
continue to work in accordance with the demands of
hospital accreditation that is working with maximum
service. As many as 7 people said that after
accreditation was completed, they could be more
relaxed in carrying out the work, because they felt
burdened as when accreditation would be done by
doing work that exceeded work on normal days.
Sometimes employees must work overtime in the
accreditation process. Accreditation encourages
employees (medical and non-medical personnel) to
reopen standard operating procedures that have so far
only been used as documentation. All nursing
activities have Standard Operating Procedures
(SOPs) that must be obeyed.
To facilitate management in monitoring and
making decisions, the relationship between employee
readiness and the sustainability of hospital
accreditation is developed using the Support vector
machine (SVM) method. The application of SVM
methods in the hospital management is still rarely
used especially in terms of accreditation.
Design a Predictive Analytics Model of Hospital Accreditation Continuity from Employee Readiness based on Artificial Intelligence
97
2 METHOD
This type of research used in this research was a
quantitative analytic study with a cross sectional
research design. This research was conducted at the
Stella Maris Hospital in Medan in November 2019.
The population of the study was 230 employee, and
the sample was obtained by 70 respondents with
stratified random sampling technique. Statistically,
data from the results of questionnaire measurements
were evaluated by univariate, bivariate using chi-
square tests, and multivariate using multiple logistic
regression tests with a confidence level of 95% ( =
0.05).
Machine learning is an application branch of
Artificial Intelligence that focuses on developing a
system that is able to learn on its own without having
to be repeatedly programmed by humans. Machine
learning applications require data as learning material
(training) before issuing outputs. Support vector
machine (SVM) is a technique for making
predictions, both in the case of classification and
regression. SVM is in the same class as Artificial
Neural Network in terms of functions and problem
conditions that can be solved (Kusumandari et al,
2018; Turnip et al, 2018). In this study, the SVM
technique is used to find the optimal separator
function (classifier) that can separate two data sets
from two different classes. The use of machine
learning techniques, because of their convincing
performance in predicting the class of new data. In
general, the classification process has two processes
as (i) The training process uses training data sets that
have known labels to build models or functions, (ii)
The testing process uses data testing sets to predict
and test the accuracy of the model or function that will
built in the training process.
The concept of SVM can be explained simply as
an attempt to find the best hyperplane that functions
as a separator of two classes in the input space (Turnip
et al, 2018). The classification problem can be
translated by trying to find a line (hyperplane)
separating between two groups as in Figure 1. The
best hyperplane separator between the two classes can
be found by measuring the hyperplane's margin and
finding its maximum point. The closest pattern is
known as a support vector. The solid line in Figure 1
shows the best hyperplane, which is located right in
the middle of the two classes, while the red and
yellow dots in the black circle are support vectors.
Figure 1: The best hyperplane that separates the two classes
-1 and +1 with SVM.
In this paper, the SVM method was used develop
a predictive analytics model that will automatically
recognize and predict the name of a hospital
accreditation continuity from an employee readiness.
This is essentially the problem of acreditation
information that the classifier to predict the level of a
hospital status from current conditions without
complicated measurement of many possible
variables. The diagram of the SVM predictive model
is shown in Figure 2.
Figure 2: The SVM Predictive Model Diagram.
3 RESULTS AND DISCUSSIONS
Characteristics of respondents including age, sex, last
education, and length of work can be seen in Table 1.
Most respondents aged <32 years (54.3%), aged> 32
years (45.7%), female sex (74.3%), male (25.7%).
Most of them have D-3 education (55.7%), a small
proportion have D-4 and S2 education respectively
(1.4%). Most respondents worked> 5 years (64.3%),
a small proportion worked <5 years (35.7%).
HIMBEP 2020 - International Conference on Health Informatics, Medical, Biological Engineering, and Pharmaceutical
98
Table 1: Characteristics of Research Respondents.
Characteristics
Numbe
r
f %
Age:
a. <32
b
. ≥32
38
32
54,3
45,7
Numbe
r
70 100,0
Sex :
a. Male
b
. Female
18
52
25,7
74,3
Numbe
r
70 100,0
Education :
a. SMA/SMK
b. D3
c. D4
d. S1
e. S2
11
39
1
18
1
15,7
55,7
1,4
25,7
1,4
Numbe
r
70 100,0
Length of work:
a. <5 years
b
. ≥5 years
25
45
35,7
64,3
Total 70 100,0
Based on the results of bivariate analysis obtained
a significant relationship with the sustainability of
accreditation, namely the accuracy to change (p =
0.017), self-confidence (p = 0.001), management
support (p = 0,000), and self-benefit (p = 0,000).
Table 2: The Relationship of Each Independent and
Dependent Variable.
Variables A
Continuity of
Accreditation
Total
p-
value
Goo
d
Lsss
f % F % F
Accuracy for
Chan
g
e:
59
0,017
Precise 52 88,1 7 11,9
Less Precise 6 54,5 5 45,5 11
Confident:
52
18
0,001
Hi
g
h 48 92,3 4 7,7
Low 10 55,6 8 44,4
Management
Su
pp
ort:
58
12
0
Support 53 91,4 5 8,6
Less Support 5 41,7 7 58,3
Benefits:
54
16
0
Hel
p
ful 50 92,6 4 7,4
Less
Helpfull
8 50 8 50
Furthermore, multivariate analysis with multiple
logistic regression tests showed that of the 4 variables
tested were found as many as 3 variables related to
the sustainability of hospital accreditation namely
accuracy for change, management support and self-
benefit.
The variable that has the highest weighting
relationship with output is the management support
variable with the value Exp (B) / OR = 18.978. While
the accuracy to change variable has the value Exp (B)
/ OR = 9,229 and the benefit variable for yourself has
the value Exp (B) / OR = 7,539. Overall results of
multiple regression tests can be seen in Table 3.
Table 3: Multiple Logistic Regression Test Results.
Variables B Sig. Exp(B)
95%CI for
Exp(B)
Accuracy to change
Management support
Benefits
Constant
2,222
2,943
2,020
-11,015
0,027
0,002
0,019
0,000
9,23
18,9
7,54
1,294-65,802
2,828-127,341
1,392-40,829
3.1 Accuracy for Change
Based on the results of the study showed that there
was a relationship of accuracy to change with the
continuity of accreditation, p = 0.027 <0.05. The
accuracy to change variable has a value of Exp (B) /
OR = 9,229 meaning that employees with
accreditation were the right time to change, have the
opportunity to have a good hospital accreditation 9.2
times higher than employees who claim accreditation
was not the right time for change. Positive
perceptions should be put to good use by hospital
leaders to improve services on an ongoing basis. This
spirit can be used as capital to improve services by
assessing the quality of clinical service indicators so
that patients will really feel the difference in the
services provided by the hospital.
Appropriateness to make changes was a
dimension of someone's readiness that explains the
individual's belief that the proposed change will be
right for the organization and the organization will
benefit from implementing change. Individuals will
believe there were logical reasons for change and the
need for proposed changes, and focus on the benefits
of change for the company, the efficiency obtained
from changes, and the congruence of company goals
with change goals (Holt, Armenakis, Field, & Harris,
2007). Obligations to accredit services provided
encourage almost all hospitals to carry out the
program, especially since the government also gives
obligations to the central and regional governments to
support hospitals in their area when accrediting.
The results of this study prove that the readiness
of employees on the dimensions of accuracy to
Design a Predictive Analytics Model of Hospital Accreditation Continuity from Employee Readiness based on Artificial Intelligence
99
change was significantly related to the sustainability
of accreditation. Employees who have readiness to
change tend to continue to carry out work in
accordance with hospital accreditation demands and
conversely employees who were less ready to change
feel that the implementation of accreditation will
continue to add to their workload. Employees who
were ready to change and claim that accreditation is a
good time to change are confident that by doing
accreditation there will be a change that is better for
the hospital and for itself. The existence of
accreditation will also change the organization of the
hospital for the better than before. Employees also
believe that with the accreditation of hospitals, they
will benefit from being the community's reference for
treatment.
According to the assumption, Accreditation was a
logical or reasonable reason for most employees to
improve their performance in accordance with their
respective professions. Accreditation was considered
as a need for better change and employees can work
more safely, comfortably, effectively and efficiently.
However, a small number of employees feel that
accreditation is a workload because they have to carry
out work in accordance with accreditation standards,
which they say adds to the workload.
3.2 Management Support
Based on the results of the study showed that there
was a relationship between management support and
the sustainability of hospital accreditation is p = 0.002
<0.05. Management support variable that has a value
of Exp (B) / OR = 18.978 means that employees who
declare hospital management support in the
continuity of hospital accreditation have a good
chance of continuing accreditation by 18.978 times
higher than employees who claim hospital
management was less supportive.
In general, hospitals are not ready to face
accreditation because they do not yet have a policy
related to the implementation of officers for the
protection of medical record documents from damage
and loss, the absence of working groups,
infrastructure that does not support and the limitations
of the hospital management system. In addition,
nurses also hope that the support of hospital
management and the spirit of accreditation will not
only end with the completion of the assessment.
At present many hospital leaders consider that
accreditation was merely achieving the graduation
status of the hospital and increasing the "prestige" of
the hospital when it gets an accreditation certificate
so that it often ignores the process of achieving
graduation, which means maintaining the quality
culture and patient safety on an ongoing basis is often
neglected.
For hospital management, the accreditation
program is a valid instrument to determine the extent
to which services at the hospital meet national
standards. Accredited status can also increase public
trust in services in hospitals and as a means of
preventing malpractice cases. The results of this study
prove that management support is related to the
sustainability of hospital accreditation. In addition,
management provides full support to employees who
strive to change in accordance with accreditation
demands. Management also provides support for
employees to have creative ideas at work and in
accordance with the demands of accreditation that can
improve service quality
.
3.3 Benefits for Yourself
Based on the results of the study showed that there
was a relationship of benefits for theirself with the
sustainability of hospital accreditation was p = 0.019
<0.05. The benefit variable itself with the value Exp
(B) / OR = 7.539 means that employees who claim to
be beneficial to themselves have a good chance of
continuing hospital accreditation by 7.5 times higher
than employees who claim to be beneficial to
themselves. Some employees stated that the reason
for approving accreditation was that there were many
positive impacts in accreditation, including: more
organized management of hospitals. And changes in
the way decisions are made by the leadership. All
employees come to know what indicators to consider
in service, how to report problems, and decisions
based on the aspirations of subordinates.
Personal benefit is a dimension that explains
aspects of beliefs about the perceived personal
benefits that will be obtained if the change is
implemented. The matter of concern, especially in
maintaining the application of accreditation standards
is not easy. There needs to be a common perception
about the benefits of hospital accreditation, both the
benefits for themselves and the benefits for the
hospital, so that all employees play an active role,
with encouragement and monitoring of the leaders.
Individual perception can directly influence
participation to increase commitment to work
decisions and productivity.
The results of this study prove that employee
readiness on the self-benefit dimension was
significantly related to the continuity and
sustainability of hospital accreditation. Employees
who claim that accreditation was beneficial for
HIMBEP 2020 - International Conference on Health Informatics, Medical, Biological Engineering, and Pharmaceutical
100
themselves tend to carry out continuous work in
accordance with the demands of accreditation. The
most important thing was that they learn more about
new things related to their work and daily tasks.
According to the researchers' assumptions,
employees who claim that accreditation was
beneficial for themselves can work according to the
job description because so far they sometimes do
work that is not their job. This will make them better
trained to carry out work that is their responsibility
and make them more skilled.
In the application of SVM method, the best
hyperplane was obtained using 2D plane as shown in
Figure 2. Clearly visible in the hyperline image
functions to separate between classes. In the correct
prediction the class / group agree () for accuracy to
change can reach the range of 35-40 and confident it
can reach the range of 35-40. From Figure 1 (x-axis
is accuracy of change and y is confident), it was
known that the output value obtained by the amount
of training data is 50% of the initial data. From the
results of the output in Figure 2 it is known that the
level of accuracy of the prediction results with
training data is 0.886 or 88.6%. Accuracy is used to
see a measure of how well the model tolerates results
with attributes in the data used.
Sensitivity is used
to measure the proportion of positive observations
that are precisely predicted. Then the specificity value
is 0.8134 or 82%. 'Specificity' is used to measure the
proportion of negative observations that are precisely
predicted. Then for an accuracy balance value of
0.8151 or 82%. 'Balanced Accurancy' is used to
measure the accuracy of the proportion of positive
class observations that are precisely predicted.
Figure 2: the 2D hyperplane for classes separation.
In Figure 3 (confolution matrix) there are two
colors, blue (correct prediction) and orange (incorrect
prediction). If one of the colors is getting thicker, then
it shows that the prediction is toward the intense
color. For example: in the picture above the solid
color is blue and the faintest is orange, then the
incorrect prediction is smaller. Furthermore, the
percentage of accreditation data that has been
classified can be seen in Figure 3. There are also TPR
and FDR which are the conclusions of each percent
prediction of correct and incorrect
.
Figure 3: Confusion matrix of clasification results
In Figure 4, parallel output image only serves to
see the relations between variables that have been
used as input in this data, then here can also be seen,
which relations are correct and incorrect.
Figure 4: Predictions model
Design a Predictive Analytics Model of Hospital Accreditation Continuity from Employee Readiness based on Artificial Intelligence
101
4 CONCLUSIONS
The results showed that there was a relationship of
accuracy to change, management support, self-
benefit with the sustainability of hospital
accreditation. While self-confidence is not related.
The management support variable has a greater
relationship with the continuity of hospital
accreditation both with Exp (B) / OR value = 18,978.
It is known that the classification of the SVM
model in training data is of type C-classificaton, with
a radial kernel. Cost is the kernel parameter value is
1, gamma parameter value is 0.125, and the number
of support vectors is 70. The accuracy level of the
prediction results with training data is 0.886 or 88%,
for the sensitivity value obtained is 0.8167 or 81%,
then the Specificity value is 0.8134 or 81%, and the
balance accuracy value is 0.8151 or 81%.
REFERENCES
Azwar, A. 2015. Menjaga Mutu Pelayanan Kesehatan.
Jakarta: Pustaka Sinar Harapan.
Algumeeyn et al 2020. Exploring staff perspectives of the
barriers to the implementation of accreditation in
Jordanian hospitals, Case Study. International Journal
of Healtcare Management.
https://doi.org/10.1080/20479700.2020.1763233
Ayuningtyas, D & Rahmadhani, S. R 2019. Puskesmas
Readiness in Accreditation Implementation as Effort to
Improve The heath Service Quality in Sumbawa
District, Journal of Indonesian Health Policy and
Administration. Vol 4. No 2: 27-35.
Devkaran and O’ Farrel 2015. The Impact of hospital
accreditation on qualitaty measures: an interruptd time
series analysis, BMC Health Service Research. (2015)
15:137
https:// doi.org 10.1186/s12913-015-0784-5
Due et al 2019. Understanding accreditation standards in
general practice- a Qualitative study, MBC Family
Practice. (2019) 20:23
http://doi.org/10.1186/s12875-019-0910-2
Ghareeb et al., 2018. Examining the Impact of
Accreditation on Primary Heatlcare organization in
Qatar, BMC Medical Education. (2018) 18:216
https://doi.org/10.1186/s12909-018-1321-0
Hariyono, W. 2013. Analisis kesiapan menghadapi
akreditasi pada pelayanan administrasi dan
manejemen di rumah sakit umum rajawali citra
kabupaten Bantul. Kesmas, 1(2), 113-116.
Hendroyogi, S. R., & Harsono, M. 2016. Keterkaitan
Antara Persepsi Pentingnya Akreditasi Rumah Sakit
Dengan Partisipasi, Komitmen, Kepuasan Kerja, Dan
Kinerja Karyawan. Jurnal Manajemen Dayasaing,
18(2), 122-137.
https://doi.org/10.23917/dayasaing.v18i2.4509
Holt, D. T., Armenakis, A. A., Field, H., & Harris, S. G.
2007. Readiness forOrganizational Change: The
Systematic Development of a Scale, Journal of Applied
Behavioral Science, 43(2), 232-245.
Idris, F. 2019. Rumah Sakit Terakreditasi, Wujudkan
Jaminan Kesehatan yang Berkualitas Tanpa
Diskriminasi. Jakarta: Badan Penyelenggara Jaminan
Sosial.
Kemenkes RI. 2011. Standar Akreditasi Rumah Sakit.
Jakarta: Kementerian Kesehatan Republik Indonesia.
Kusumandari, D., Risqyawan, M., Yazir, M., Turnip, M.,
Darma, A. and Turnip, A., 2018. Application of
convolutional neural network classifier for wireless
arrhythmia detection, Journal of Physics: Conference
Series, Volume 1080 (2018) 012048 doi:
10.1088/1742-6596/1080/1/012048.
Leonarda, R. 2011. Gambaran Persiapan Penilaian
Akreditasi Rumah Sakit Bersalin Asih Jakarta Tahun
2011. Universitas Indonesia.
Mandawati, M., Fuadi, M. J., & Jaelan. 2018. Dampak
akreditasi rumah sakit: studi kualitatif terhadap
perawat di RSUD KRT Setjonegoro Wonosobo.
NURSCOPE: Jurnal Penelitian Dan Pemikiran Ilmiah
Keperawatan, 4(4), 23-29.
Robbins, S. P., & Judge, T. A. 2014. Perilaku Organisasi
(Cetakan 12). Jakarta: Salemba Empat.
Santoso, A. 2016. Akreditasi Rumah Sakit: Kepentingan
Rumah Sakit atau Masyarakat?
Sekretariat Negara RI. 2009. Undang-Undang No. 36
Tahun 2009 tentang Kesehatan. Jakarta: Sekretariat
Negara Republik Indonesia.
Sembodo et al., 2019. Service Quality Model with Cultural
Perspective in Effect on Patient Satisfaction in
Hospitals with Different Accreditation Status. Medico-
legal update. Vol. 19. No. 1204-209.
https://doi.org/10.5958/0974-1283.2019.00041.0.
Soepojo, P., Koentjoro, T., & Utarini, A., 2012.
Bechmarking system akreditasi rumah sakit di
Indonesia dan Australia. Jurnal Manajemen Pelayanan
Kesehatan, 2(2), 1-8.
Turnip, A., Andrian, Turnip, M., Dharma, A., Paninsari, D.,
Nababan, T., Ginting, C.N., 2020. An application of
modified filter algorithm fetal electrocardiogram
signals with various subjects, International Journal of
Artificial Intelligence, vol. 18, no., 2020.
Turnip, A., Ilham Rizqywan, M., Kusumandari, D., et al.,
2018. Classification of ECG signal with Support Vector
Machine Method for Arrhythmia Detection, Journal of
Physics: Conference Series, Vol. 970 (2018) 012012
doi: 10.1088/1742-6596/970/1/012012.
Turnip, A., Kusumandari, D., Pamungkas, D., 2018. Drug
Abuse Identification based EEG-P300 Amplitude and
Latency with Fuzzy Logic Calssifier, IEEE International
Conference on Applied Engineering, (ICAE), 3-4 Oct.
2018, DOI: 10.1109/INCAE.2018.8579378.
Wantouw, S., Antariksa, Yanuwiadi, B., & Tamod, Z. 2014.
Perception and Participationon Co-Management of
Green Open Space in Coastal Reclamation Area
Manado. International Journal of Applied Sociology,
1(1), 108-113.
HIMBEP 2020 - International Conference on Health Informatics, Medical, Biological Engineering, and Pharmaceutical
102
Wardhani et al., 2019. Hospital Accreditation status in
Indonesia: Associated with hospital characteristics,
market competition intensity, and hospital
performance?, BMC Health Service Research (2019)
19: 372. http://doi.org/10.1186/s12913-019-4187-x.
Wijaya, C., Andrian, M., Harahap, M., Turnip, A., 2019.
Abnormalities State Detection from P-Wave, QRS
Complex, and T-Wave in Noisy ECG, Journal of
Physics: Conference Series, Volume 1230, (2019)
012015. doi:10.1088/1742-6596/1230/1/012015.
Design a Predictive Analytics Model of Hospital Accreditation Continuity from Employee Readiness based on Artificial Intelligence
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