Explorative analysis of human disease-symptoms relations using the
Convolutional Neural Network
- URL: http://arxiv.org/abs/2302.12075v1
- Date: Thu, 23 Feb 2023 15:02:07 GMT
- Title: Explorative analysis of human disease-symptoms relations using the
Convolutional Neural Network
- Authors: Zolzaya Dashdorj and Stanislav Grigorev and Munguntsatsral Dovdondash
- Abstract summary: This study aims to understand the extent of symptom types in disease prediction tasks.
Our results indicate that machine learning can potentially diagnose diseases with the 98-100% accuracy in the early stage.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the field of health-care and bio-medical research, understanding the
relationship between the symptoms of diseases is crucial for early diagnosis
and determining hidden relationships between diseases. The study aimed to
understand the extent of symptom types in disease prediction tasks. In this
research, we analyze a pre-generated symptom-based human disease dataset and
demonstrate the degree of predictability for each disease based on the
Convolutional Neural Network and the Support Vector Machine. Ambiguity of
disease is studied using the K-Means and the Principal Component Analysis. Our
results indicate that machine learning can potentially diagnose diseases with
the 98-100% accuracy in the early stage, taking the characteristics of symptoms
into account. Our result highlights that types of unusual symptoms are a good
proxy for disease early identification accurately. We also highlight that
unusual symptoms increase the accuracy of the disease prediction task.
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