A Deep Learning Fusion Approach to Diagnosis the Polycystic Ovary Syndrome (PCOS)

Abrar Alamoudi, Irfan Ullah Khan, N. Aslam, N. Qahtani, H. Alsaif, Omran Al Dandan, Mohammed Al Gadeeb, Ridha Al Bahrani
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引用次数: 6

Abstract

One of the leading causes of female infertility is PCOS, which is a hormonal disorder affecting women of childbearing age. The common symptoms of PCOS include increased acne, irregular period, increase in body hair, and overweight. Early diagnosis of PCOS is essential to manage the symptoms and reduce the associated health risks. Nonetheless, the diagnosis is based on Rotterdam criteria, including a high level of androgen hormones, ovulation failure, and polycystic ovaries on the ultrasound image (PCOM). At present, doctors and radiologists manually perform PCOM detection using ovary ultrasound by counting the number of follicles and determining their volume in the ovaries, which is one of the challenging PCOS diagnostic criteria. Moreover, such physicians require more tests and checks for biochemical/clinical signs in addition to the patient’s symptoms in order to decide the PCOS diagnosis. Furthermore, clinicians do not utilize a single diagnostic test or specific method to examine patients. This paper introduces the data set that includes the ultrasound image of the ovary with clinical data related to the patient that has been classified as PCOS and non-PCOS. Next, we proposed a deep learning model that can diagnose the PCOM based on the ultrasound image, which achieved 84.81% accuracy using the Inception model. Then, we proposed a fusion model that includes the ultrasound image with clinical data to diagnose the patient if they have PCOS or not. The best model that has been developed achieved 82.46% accuracy by extracting the image features using MobileNet architecture and combine with clinical features.
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深度学习融合诊断多囊卵巢综合征
女性不育的主要原因之一是多囊卵巢综合征,这是一种影响育龄妇女的荷尔蒙失调。多囊卵巢综合征的常见症状包括痤疮增加,月经不规律,体毛增加和超重。多囊卵巢综合征的早期诊断对于控制症状和减少相关的健康风险至关重要。尽管如此,诊断是基于鹿特丹标准,包括高水平的雄激素,排卵失败,多囊卵巢超声图像(PCOM)。目前,医生和放射科医师利用卵巢超声手工检测PCOM,通过计数卵巢中卵泡的数量和确定其体积,这是PCOS诊断标准中具有挑战性的标准之一。此外,除了患者的症状外,这些医生还需要进行更多的生化/临床体征测试和检查,以确定多囊卵巢综合征的诊断。此外,临床医生不使用单一的诊断测试或特定的方法来检查患者。本文介绍的数据集包括卵巢超声图像与临床资料的患者已被分类为多囊卵巢综合征和非多囊卵巢综合征。接下来,我们提出了一种基于超声图像诊断PCOM的深度学习模型,使用Inception模型达到了84.81%的准确率。然后,我们提出了一个包括超声图像与临床数据的融合模型来诊断患者是否患有PCOS。利用MobileNet架构提取图像特征并结合临床特征,得到的最佳模型准确率达到82.46%。
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