人工智能模型利用子宫内膜分析预测辅助生殖技术的成功率

Ricardo H. Asch Schuff, Jorge Suarez, Nicolas Laugas, Marlene L. Zamora Ramirez, Tamar Alkon
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摘要

EndoClassify 是一种人工智能(AI)模型,旨在评估子宫内膜特征并提高胚胎受孕率。EndoClassify 采用了用于图像分割的 Attention U-Net 和用于图像分类的 GoogLeNet Inception,利用由 402 幅子宫内膜超声图像扩增到 14.989 幅的数据集,表现出卓越的性能,准确率达 95%,损失率为 10%,灵敏度为 93%,特异性为 93%。EndoClassify 的意义远不止于其强大的指标。这种人工智能模型在临床环境中具有变革潜力,它为专家提供了一种可靠、快速、准确的工具,用于辅助生殖技术(ART)周期中的子宫内膜评估。识别 "良好子宫内膜 "的准确率为 71%,与 74% 的怀孕率相对应,这凸显了 EndoClassify 在显著改善患者预后方面的作用。总之,超声参数与人工智能技术的无缝整合提高了临床决策的效率,标志着先进技术与临床专业知识之间的重要合作。虽然承认回顾性设计是一个局限,但必须强调这种设计可能带来的偏差。此外,将没有已知倍性状态的新鲜和冷冻胚胎移植包括在内,也增加了研究局限性的透明度。EndoClassify是一个进步的灯塔,它将彻底改变个性化治疗策略,为辅助生殖技术领域的专家和患者带来实实在在的好处。
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Artificial intelligence model utilizing endometrial analysis to contribute as a predictor of assisted reproductive technology success
This study addresses the development of EndoClassify, an artificial intelligence (AI) model designed to assess endometrial characteristics and enhance embryo receptivity. Utilizing a dataset of 402 endometrial ultrasound images augmented to 14.989, EndoClassify, incorporating Attention U-Net for image segmentation and GoogLeNet Inception for image classification, demonstrated exceptional performance with an accuracy of 95%, loss of 10%, a sensitivity of 93%, and specificity of 93%. The significance of EndoClassify extends beyond its robust metrics. This AI model has transformative potential in clinical settings, offering specialists a reliable, rapid, and accurate tool for endometrial assessment in assisted reproduction technology (ART) cycles. Identifying ‘good endometrium’ with 71% accuracy, corresponding to a 74% pregnancy rate, underscores EndoClassify’s role in significantly improving patient outcomes. In conclusion, the seamless integration of ultrasonographic parameters and AI techniques enhances efficiency in clinical decision-making and signifies a crucial collaboration between advanced technology and clinical expertise. While acknowledging the retrospective design as a limitation, it is imperative to highlight potential biases introduced by this design. Additionally, including fresh and frozen embryo transfers without known ploidy status adds transparency to the study’s limitations. EndoClassify stands as a beacon of progress, poised to revolutionize personalized treatment strategies and bring tangible benefits to specialists and patients in the dynamic landscape of assisted reproductive technology.
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