A Machine learning based approach for detection of Tumor

Kirankumar Madihalli, H. Ramya
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Abstract

The tumor is a medical disorder that can be noticed in several parts of the body. A tumor in simple words is the abnormal growth of cells in a particular organ of the body without any control. These cells can interrupt the normal functioning of the brain. It can be found in people of any age, children, teenagers, and adults irrespective of gender. If the tumor is found in the brain, it is referred to as a brain tumor. Brain tumor must be analyzed accurately as it involves the life of a person. The tumor can be of Cancerous Tumor (CT) and Non-cancerous Tumor (NCT) types. The motive of the paper is to develop machine learning algorithms, which can detect the tumor without human interference and classify it as either CT or NCT. Machine learning algorithms developed are logistic regression and fuzzy c means methods. The logistic regression method is developed, it is a statistical model that helps in distinguishing categorical values. The sigmoid function is used to categorize the values. Furthermore, Fuzzy C-Means (FCM) method has also been developed. In the FCM method membership functions are calculated. Finding the similarity of data points is done and forming the clusters. The results of logistic regression and FCM are compared.
基于机器学习的肿瘤检测方法
肿瘤是一种医学疾病,可以在身体的几个部位发现。简单来说,肿瘤就是身体某一特定器官的细胞不受控制地异常生长。这些细胞会干扰大脑的正常功能。它可以在任何年龄的人身上发现,儿童、青少年和成年人,不分性别。如果肿瘤在大脑中被发现,它被称为脑瘤。脑肿瘤关系到人的生命,必须准确分析。肿瘤可分为癌性肿瘤(CT)和非癌性肿瘤(NCT)。本文的动机是开发机器学习算法,该算法可以在没有人为干扰的情况下检测肿瘤并将其分类为CT或NCT。开发的机器学习算法是逻辑回归和模糊c均值方法。逻辑回归方法是一种有助于区分分类值的统计模型。sigmoid函数用于对值进行分类。此外,还发展了模糊c均值(FCM)方法。在FCM方法中,计算隶属函数。找到数据点的相似性并形成聚类。比较了logistic回归和FCM的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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