Detection of Ovarian Tumor Using Machine Learning Approaches A Review

Gitanjali Wadhwa, Mansi Mathur
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Abstract

The important part of female reproductive system is ovaries. The importance of these tiny glands is derived from the production of female sex hormones and female gametes. The place of these ductless almond shaped tiny glandular organs is on just opposite sides of uterus attached with ovarian ligament. There are several reasons due to which ovarian cancer can arise but it can be classified by using different number of techniques. Early prediction of ovarian cancer will decrease its progress rate and may possibly save countless lives. CAD systems (Computer-aided diagnosis) is a noninvasive routine for finding ovarian cancer in its initial stages of cancer which can keep away patients’ anxiety and unnecessary biopsy. This review paper states us about how we can use different techniques to classify the ovarian cancer tumor. In this survey effort we have also deliberate about the comparison of different machine learning algorithms like K-Nearest Neighbor, Support Vector Machine and deep learning techniques used in classification process of ovarian cancer. Later comparing the different techniques for this type of cancer detection, it gives the impression that Deep Learning Technique has provided good results and come out with good accuracy and other performance metrics.
使用机器学习方法检测卵巢肿瘤综述
卵巢是女性生殖系统的重要组成部分。这些微小腺体的重要性来自于雌性性激素和雌性配子的产生。这些无管杏仁状的微小腺器官位于与卵巢韧带相连的子宫的正对面。卵巢癌产生的原因有很多,但可以通过使用不同的技术来分类。卵巢癌的早期预测将降低其进展率,并可能挽救无数生命。计算机辅助诊断(CAD)系统是卵巢癌早期发现的一种无创常规方法,可以避免患者的焦虑和不必要的活检。本文综述了如何利用不同的技术对卵巢癌肿瘤进行分类。在这项调查工作中,我们还考虑了不同的机器学习算法,如k -最近邻,支持向量机和深度学习技术在卵巢癌分类过程中使用的比较。随后比较了这种类型的癌症检测的不同技术,给人的印象是深度学习技术提供了良好的结果,并且具有良好的准确性和其他性能指标。
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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