A predictive prototype for the identification of diseases relied on the symptoms described by patients

S. K. Nayak, Mamata Garanayak, S. K. Swain
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Abstract

INTRODUCTION: A thorough and timely investigation of any health-related problem is essential for disease prevention and treatment. The normal way of diagnosis may not be sufficient in the event of a serious illness problem. OBJECTIVE: Creating a medical diagnosis prototype that uses many machine learning processes to forecast any illness relied on symptoms explained by patients can lead to an errorless diagnosis as compared to the traditional ways. METHODS: We created a disease prediction prototype using ML techniques such as random forest, CART, multinomial linear regression, and KNN. The data set utilized for processing contained over 132 illnesses. Diagnosis algorithm outcomes the ailment that the person may be suffering from relied on the symptoms provided by the patients. RESULTS: When compared to CART and random forest (accuracy is 97.72%, multinomial linear regression and KNN produced the best outcomes. The accuracy of the KNN prediction and multinomial linear regression techniques was 98.76%. CONCLUSION: The diagnostic prototype can function as a doctor in the early detection of an illness, ensuring that medical care can begin in an appropriate time and many lives can be secured.
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根据患者描述的症状识别疾病的预测原型
导言:对任何与健康有关的问题进行彻底和及时的调查,对于预防和治疗疾病至关重要。在出现严重疾病问题时,普通的诊断方法可能无法满足需要。目的:与传统方法相比,创建一个医疗诊断原型,利用许多机器学习过程,根据患者解释的症状预测任何疾病,可以实现无差错诊断。方法:我们利用随机森林、CART、多项式线性回归和 KNN 等 ML 技术创建了一个疾病预测原型。用于处理的数据集包含超过 132 种疾病。诊断算法根据患者提供的症状得出患者可能患有的疾病。结果:与 CART 和随机森林(准确率为 97.72%)相比,多叉线性回归和 KNN 的结果最好。KNN 预测和多项式线性回归技术的准确率为 98.76%。结论:诊断原型可发挥医生的作用,及早发现疾病,确保在适当的时间开始医疗护理,从而保障许多人的生命安全。
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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