Published July 30, 2021 | Version v1
Journal article Open

Symptoms Based Multiple Disease Prediction Model using Machine Learning Approach

  • 1. School of Computer Science And Engineering, Vellore Institute of Technology, Vellore (Tamil Nadu), India.
  • 2. r, School of Computer Science And Engineering, Vellore Institute of Technology, Vellore (Tamil Nadu), India.
  • 1. Publisher

Description

The turn of events and misuse of a few noticeable Data mining strategies in various genuine application regions (for example Trade, Medical management and Natural science) has induced the usage of such methods in Machine Learning (ML) constrains, to distinct helpful snippets of information of the predefined information in medical services networks, biomedical fields and so forth The exact examination of clinical data set advantages in early illness expectation, patient consideration and local area administrations. The methodology of Machine Learning (ML) has been effectively utilized in grouped technologies including Disease forecast. The objective of generating classifier framework utilizing Machine Learning (ML) models is to massively assist with addressing the well-being related issues by helping the doctors to foresee and analyze illnesses at a beginning phase. Sample information of 4920 patient’s records determined to have 41 illnesses was chosen for examination. A reliant variable was made out of 41 sicknesses. 95 of 132 autonomous variables (symptoms) firmly identified with infections were chosen and advanced. This examination work completed shows the illness expectation framework created utilizing Machine learning calculations like Random Forest, Decision Tree Classifier and LightGBM. The paper confers the relative investigation of the consequences of the above-mentioned algorithms are utilized efficiently. 

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Journal article: 2278-3075 (ISSN)

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ISSN
2278-3075
Retrieval Number
100.1/ijitee.I93640710921