Kermanshahchi Jonathan, Reddy Akshay J, Xu Jingbing, Mehrok Gagandeep K, Nausheen Fauzia
Medicine, California University of Science and Medicine, Colton, USA.
Internal Medicine, California Health Sciences University, Clovis, USA.
Cureus. 2024 Jul 22;16(7):e65134. doi: 10.7759/cureus.65134. eCollection 2024 Jul.
Polycystic ovary syndrome (PCOS) is a common endocrine disorder that disrupts reproductive function and hormonal balance. It primarily affects reproductive-aged women and leads to physical, metabolic, and emotional challenges affecting the quality of life. In this study, we develop a machine learning-based model to accurately identify PCOS pelvic ultrasound images from normal pelvic ultrasound images. By leveraging 1,932 pelvic ultrasound images from the Kaggle online platform (Google LLC, Mountain View, CA), we were able to create a model that accurately detected multiple small follicles in the ovaries and an increase in ovarian volume for PCOS pelvic ultrasound images from normal pelvic ultrasound images. Our developed model demonstrated a promising performance, achieving a precision value of 82.6% and a recall value of 100%, including a sensitivity and specificity of 100% each. The value of the overall accuracy proved to be 100% and the F1 score was calculated to be 0.905. As the results garnered from our study are promising, further validation studies are necessary to generalize the model's capabilities and incorporate other diagnostic factors of PCOS such as physical exams and lab values.
多囊卵巢综合征(PCOS)是一种常见的内分泌紊乱疾病,会扰乱生殖功能和激素平衡。它主要影响育龄女性,并导致影响生活质量的身体、代谢和情绪方面的问题。在本研究中,我们开发了一种基于机器学习的模型,以从正常盆腔超声图像中准确识别PCOS盆腔超声图像。通过利用来自Kaggle在线平台(谷歌有限责任公司,加利福尼亚州山景城)的1932张盆腔超声图像,我们能够创建一个模型,该模型能从正常盆腔超声图像中准确检测出PCOS盆腔超声图像中卵巢内多个小卵泡以及卵巢体积增大的情况。我们开发的模型表现出了良好的性能,精确率值达到82.6%,召回率值为100%,其中敏感性和特异性均为100%。总体准确率值为100%,F1分数经计算为0.905。由于我们研究获得的结果很有前景,因此有必要进行进一步的验证研究,以推广该模型的能力,并纳入PCOS的其他诊断因素,如体格检查和实验室检查值。