Paramasivam Gokila Brindha, Ramasamy Rajammal Rajalaxmi
Technol Health Care. 2024;32(5):2893-2909. doi: 10.3233/THC-230935.
Polycystic Ovary Syndrome (PCOS) is a medical condition that causes hormonal disorders in women in their childbearing years. The hormonal imbalance leads to a delayed or even absent menstrual cycle. Women with PCOS mainly suffer from extreme weight gain, facial hair growth, acne, hair loss, skin darkening, and irregular periods, leading to infertility in rare cases. Doctors usually examine ultrasound images and conclude the affected ovary but are incapable of deciding whether it is a normal cyst, PCOS, or cancer cyst manually.
To have access to the high-risk crucial PCOS and to detect the condition and the treatment aimed at mitigating health hazards such as endometrial hyperplasia/cancer, infertility, pregnancy complications, and the long-term burden of chronic diseases such as cardiometabolic disorders linked with PCOS.
The proposed Self-Defined Convolution Neural Network method (SD_CNN) is used to extract the features and machine learning models such as SVM, Random Forest, and Logistic Regression are used to classify PCOS images. The parameter tuning is done with lesser parameters in order to overcome over-fitting issues. The self-defined model predicts the occurrence of the cyst based on the analyzed features and classifies the class labels effectively.
The Random Forest Classifier was found to be the most reliable and accurate among Support Vector Machine (SVM) and Logistic Regression (LR), with accuracy being 96.43%.
The proposed model establishes better trade-off compared to various other approaches and works effectually for PCOS prediction.
多囊卵巢综合征(PCOS)是一种导致育龄期女性激素紊乱的病症。激素失衡会导致月经周期延迟甚至闭经。患有PCOS的女性主要遭受体重过度增加、面部毛发增多、痤疮、脱发、皮肤变黑以及月经不规律等问题,在极少数情况下会导致不孕。医生通常通过检查超声图像来判断受影响的卵巢,但无法手动确定它是正常囊肿、PCOS还是癌性囊肿。
识别高危关键的PCOS,并检测该病症以及针对减轻健康危害的治疗方法,如子宫内膜增生/癌、不孕、妊娠并发症以及与PCOS相关的慢性疾病(如心脏代谢紊乱)的长期负担。
使用所提出的自定义卷积神经网络方法(SD_CNN)提取特征,并使用支持向量机(SVM)、随机森林和逻辑回归等机器学习模型对PCOS图像进行分类。通过较少的参数进行参数调整,以克服过拟合问题。自定义模型根据分析的特征预测囊肿的发生,并有效地对类别标签进行分类。
在支持向量机(SVM)和逻辑回归(LR)中,随机森林分类器被发现是最可靠和准确的,准确率为96.43%。
与其他各种方法相比,所提出的模型建立了更好的权衡,并且在PCOS预测方面有效地发挥作用。