the process is repeated 10 times to validate the results.
The training set is used for classification in order to
identify the specific parameters. The association rules
results in unique associations among the attributes
which are exploited in next step. In the last step, a
certain threshold is used over the resultant rules to
classify the instances into one of the two classes such
as Control and AD.
Figure 1: A proposed model for early detection of AD.
5 CONCLUSIONS
This study is based on the comparison and evaluation
of recent work done in the prognosis and prediction of
Alzheimer’s disease using machine learning methods.
Explicitly, the recent trends with respect to machine
learning has been revealed including the types of data
being used and the performance of machine learning
methods in predicting early stages of Alzheimer’s. It
is obvious that machine learning tends to improve the
prediction accuracy especially when compared to
standard statistical tools. However, based on the
review, the clinical diagnosis were not 100% accurate
as pathological verification was not provided which
consequently introduce uncertainty in the predicted
results. The proposed method deals with
pathologically proven data and overcomes the class
imbalance and overtraining issues. Proposed model is
based on single modality to overcome the increased
cost of computing and combining different modalities.
We believe that pathologically proven data may
increase the accuracy and validity, while a balanced
class will help the classifiers to give accurate results.
This model is can help to improve the prediction
performance by physicians and cover the limitations
pointed out in the previous research.
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