宫腔镜检查
危险分层
分层(种子)
医学
工程类
妇科
计算机科学
人工智能
生物
内科学
种子休眠
植物
发芽
休眠
作者
Bohan Li,Hui Chen,Hua Duan
标识
DOI:10.1016/j.fmre.2024.02.014
摘要
Intrauterine adhesions (IUAs) pose challenges to natural fertility and impede timely conception. Assisted reproductive technologies (ART) offer effective solutions but are often expensive in developing nations. This study introduces an Artificial intelligence (AI) application, MobilenetV3PH, featuring a proportional hazard (PH) neural network architecture to predict reproductive outcomes following hysteroscopic adhesiolysis in IUAs and to categorize subfertility risks. The present study leveraged 4922 second-look hysteroscopic images obtained from 555 patients post-hysteroscopic adhesiolysis, sourced from a prospective IUA clinical database (NCT05381376). The prospective cohort was randomly partitioned into training, validation, and test sets for model development, hyperparameter validation, and external validation. MobilenetV3PH achieved a noteworthy Area Under the Curve (AUC) of 0.920, outperforming alternative models significantly. The AI application seamlessly integrated into the hysteroscopic platform, demonstrating an average analysis time of 35.7 ± 5.6 seconds per patient. Notably, it excelled in predicting natural conception compared to conventional clinical scoring methods. The identification of high-risk IUAs patients who encounter difficulties in natural conception through AI-predicted subfertility risks revealed that these individuals might derive greater benefits from ART (HR = 4.616, P = 0.007) compared to their low-risk counterparts (HR = 0.628, P = 0.534). Overall, this AI tool exhibits promise for practical clinical applications, assisting in the prediction of postoperative difficulties in natural conception, patient risk stratification, and management strategies making, ultimately enhancing cost-effective interventions.
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