Performance Study Of Machine Learning Algorithms Used For Alzheimer’s Disease Detection

Q3 Pharmacology, Toxicology and Pharmaceutics Journal of Pharmaceutical Negative Results Pub Date : 2023-01-25 DOI:10.47750/pnr.2023.14.s01.108
Ms. Sharda Y.Salunkhe, Dr. Mahesh S. Chavan
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引用次数: 1

Abstract

Dementia is widely recognized. With age comes a dramatic surge in dementia cases. It is an irreversible brain disorder that impairs thinking, memory, and judgment, causing a person’s cognitive ability to decline. Around 50 million individuals worldwide have dementia, and 10 million new cases are identified yearly. Therefore, solving this problem has become urgently necessary, and dementia must be diagnosed early for more advanced treatments to develop. Cognitive tests are used to assess a person’s mental capacity to diagnose this condition early. In the present study, we tried to detect dementia in its early stages using machine learning approaches. Data collected for the analysis comprised gender, age, education, MMSE (Mini‐Mental State Examination), CDR (Clinical Dementia Rating), ASF (Atlas scaling factor), handedness, and hospital visits for patients classified as demented or non-demented. We applied machine learning approaches such as KNN, DT (Decision Tree), and RF (Random Forest) classifiers to analyze the data. Each algorithm is compared in a study. The most accurate algorithm will be employed to continue examining the data. Our suggested study used an additional tree classifier for deeper data analysis.
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用于阿尔茨海默病检测的机器学习算法的性能研究
痴呆症是公认的。随着年龄的增长,痴呆症病例急剧增加。它是一种不可逆转的大脑障碍,会损害思维、记忆和判断,导致一个人的认知能力下降。全世界约有5000万人患有痴呆症,每年新增1000万例。因此,解决这个问题变得迫切必要,痴呆症必须尽早诊断,才能发展出更先进的治疗方法。认知测试用于评估一个人早期诊断这种情况的心理能力。在本研究中,我们试图使用机器学习方法来检测早期痴呆症。为分析收集的数据包括性别、年龄、教育程度、MMSE(迷你精神状态检查)、CDR(临床痴呆评分)、ASF(Atlas比例因子)、利手情况以及被归类为痴呆或非痴呆患者的医院就诊情况。我们应用机器学习方法,如KNN、DT(决策树)和RF(随机森林)分类器来分析数据。研究中对每种算法进行了比较。将采用最准确的算法来继续检查数据。我们建议的研究使用了一个额外的树分类器来进行更深入的数据分析。
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