DEEP LEARNING FOR POLYCYSTIC OVARIAN SYNDROME CLASSIFICATION USING CONVOLUTIONAL NEURAL NETWORK

Odi Nurdiawan, Heliyanti Susana, Ahmad Faqih
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Abstract

Polycystic Ovarian Syndrome (PCOS) is the main cause of infertility in women. This condition results in abnormal hormone levels. Women who experience this syndrome will have irregular hormone levels and experience irregular menstrual cycles as well, thereby affecting the reproductive system. Symptoms that arise as a result of the increase in these hormones can be seen from the growth of hair on the legs, weight gain which results in not being ideal, irregular menstruation, unusual acne growth, and oily skin. The problem of Polycystic Ovarian Syndrome can cause disturbances in ovulation and cause infertility in women. Urgency This research requires a classification that has good accuracy in diagnosing early to minimize the rate of pregnancy failure. The aim of the research is to be able to model early detection of Polycystic Ovarian Syndrome with high accuracy so that it can help the health team in detecting Polycystic Ovarian Syndrome or not having Polycystic Ovarian Syndrome. The research stage has 3 stages including the first stage of identifying problems and collecting datasets from Telkom University dataverse in the form of images and literature reviews of various sources. The second stage is Pre Processing of image data, Data Training, modeling design by managing image data and classifying using the Convolutional Neural Network Algorithm deep learning model and testing. The third stage is evaluating the test results and discussing the results of accuracy in determining the status of Normal Polycystic Ovarian Syndrome or PCOS. The results of training and validation on the ovarian xray image dataset using the CNN architecture that has been made, 40 iterations (epochs), and 4 step_per_epochs show an accuracy value of 0.8947 or 89.47% and a loss value of 0.2684.
利用卷积神经网络进行多囊卵巢综合征分类的深度学习
多囊卵巢综合症(PCOS)是导致女性不孕的主要原因。这种疾病会导致激素水平异常。患有这种综合症的妇女体内激素水平不正常,月经周期也不规律,从而影响生殖系统。这些激素水平升高导致的症状包括腿部长毛、体重增加导致体型不理想、月经不调、痤疮异常生长和皮肤油腻。多囊卵巢综合症会导致排卵障碍,造成女性不孕。研究的紧迫性 这项研究需要一种分类方法,这种方法在早期诊断方面具有很高的准确性,可以最大限度地降低怀孕失败率。研究的目的是能够建立一个高准确度的多囊卵巢综合症早期检测模型,从而帮助医疗团队检测出多囊卵巢综合症或没有患上多囊卵巢综合症。研究阶段分为三个阶段,第一阶段是发现问题,从 Telkom 大学的数据海以图像和各种来源的文献综述的形式收集数据集。第二阶段是图像数据预处理、数据训练、通过管理图像数据进行建模设计,并使用卷积神经网络算法深度学习模型进行分类和测试。第三阶段是评估测试结果,讨论确定正常多囊卵巢综合症或多囊卵巢综合症状态的准确性结果。使用 CNN 架构、40 次迭代(epochs)和 4 step_per_epochs 对卵巢 X 光图像数据集进行训练和验证的结果显示,准确率为 0.8947 或 89.47%,损失值为 0.2684。
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