STROML: A standard machine learning dataset for diagnosis of stroke
patients’ lesion location based on the Barthel index and Lawton IADL
scale
Abstract
Stroke is the second cause of mortality and has third place in the group
of disabling diseases. Diagnosis of lesion location of patients with
stroke is one of the main factors to determine treatment approaches for
these cases. The usual methods in this diagnosis are time-consuming and
costly. Today, expert systems, a machine learning method, have been able
to reduce costs in diagnosing the disease. One of the most important
components of an expert system is the dataset. Because there is no
dataset for stroke patients, in this research, STROML, the first
standard machine learning dataset for diagnosis of stroke patients’
lesion location based on the Barthel index and Lawton IADL scale is
released. To show the efficiency of STROML, a hybrid expert model for
diagnosis lesion location of patients with stroke is proposed. The
proposed model contains two main parts: the neural-network-based
classifier and the rule-based classifier. In this model, a PNN
classifier is used as the neural-network-based classifier and a CART
algorithm is employed as the rule-based classifier. Experiment results
show that the proposed model can diagnose lesion location by more than
90% accuracy and can extract 10 diagnosis inference rules for this by
using STROML.