Utilizing the Random Forest Algorithm to Enhance Alzheimer’s disease Diagnosis

Chamandeep Kaur, Tuhina Panda, Subhasis Panda, Abdul Rahman Mohammed Al Ansari, M. Nivetha, B. Kiran Bala
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引用次数: 2

Abstract

Machine learning is widely used in many aspects of healthcare. The development of medical technology has made it possible to gather better data for early disease symptom diagnosis. This study makes an effort to categorize Alzheimer’s disorder. Alzheimer’s disease is a fatal disorder that may result in memory loss and mental impairment. To prepare for medical attention, this needs early disease diagnosis. Magnetic resonance imaging (MRI) can be used to accurately and non-invasively diagnose Alzheimer’s disease. Effective feature extraction and segmentation techniques are necessary for the accurate diagnosis of MRI images. Utilizing MRI data of the brain’s white matter, grey matter, and cerebrospinal fluid, feature selection is carried out. Random forest trees are used in standard machine learning methods like regression and classification. The results of the utilized method were next contrasted with those of other machine learning techniques. As a result, RF model-based interpolation analysis surpasses the RF non-imputation method with greater accuracy, specificity, sensitivity, f-measure, and ROC.
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利用随机森林算法增强阿尔茨海默病的诊断
机器学习被广泛应用于医疗保健的许多方面。医学技术的发展使更好地收集疾病早期症状诊断数据成为可能。本研究试图对阿尔茨海默病进行分类。阿尔茨海默病是一种致命的疾病,可能导致记忆丧失和精神损伤。为了做好就医的准备,这需要早期的疾病诊断。磁共振成像(MRI)可用于准确、无创地诊断阿尔茨海默病。有效的特征提取和分割技术是准确诊断MRI图像的必要条件。利用脑白质、灰质和脑脊液的MRI数据,进行特征选择。随机森林树用于标准的机器学习方法,如回归和分类。然后将所使用方法的结果与其他机器学习技术的结果进行对比。因此,基于RF模型的插值分析以更高的准确性、特异性、灵敏度、f-measure和ROC优于RF非插补方法。
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