Alzheimer's patients gradually lose their ability to think, behave, and interact with others. Medical history, laboratory tests, daily activities, and personality changes can all be used to diagnose the disorder. A series of time-consuming and expensive tests are used to diagnose the illness. The most effective way to identify Alzheimer's disease is using a Random-forest classifier in this study, along with various other Machine Learning techniques. The main goal of this study is to fine-tune the classifier to detect illness with fewer tests while maintaining a reasonable disease discovery accuracy. We successfully identified the condition in almost 94% of cases using four of the thirty frequently utilized indicators.
翻译:阿尔茨海默氏病患者逐渐丧失思考、行为和与他人互动的能力。医学史、实验室测试、日常活动和人格变化都可用于诊断疾病。一系列耗时和昂贵的测试用于诊断疾病。在这项研究中,发现阿尔茨海默氏病的最有效方式是使用随机森林分类器和其他各种机器学习技术。本研究的主要目标是微调分类人员,以较少的测试检测疾病,同时保持合理的疾病发现准确性。我们成功地确定了近94%的病例状况,使用了30个常用指标中的4个。