Suppr超能文献

通过人工智能与胚胎学家进行胚胎选择:一项系统综述。

Embryo selection through artificial intelligence versus embryologists: a systematic review.

作者信息

Salih M, Austin C, Warty R R, Tiktin C, Rolnik D L, Momeni M, Rezatofighi H, Reddy S, Smith V, Vollenhoven B, Horta F

机构信息

Department of Obstetrics and Gynaecology, Monash University, Clayton, Victoria, Australia.

Department of Data Science and Artificial Intelligence, Faculty of Information Technology, Monash University, Clayton, Victoria, Australia.

出版信息

Hum Reprod Open. 2023 Aug 15;2023(3):hoad031. doi: 10.1093/hropen/hoad031. eCollection 2023.

Abstract

STUDY QUESTION

What is the present performance of artificial intelligence (AI) decision support during embryo selection compared to the standard embryo selection by embryologists?

SUMMARY ANSWER

AI consistently outperformed the clinical teams in all the studies focused on embryo morphology and clinical outcome prediction during embryo selection assessment.

WHAT IS KNOWN ALREADY

The ART success rate is ∼30%, with a worrying trend of increasing female age correlating with considerably worse results. As such, there have been ongoing efforts to address this low success rate through the development of new technologies. With the advent of AI, there is potential for machine learning to be applied in such a manner that areas limited by human subjectivity, such as embryo selection, can be enhanced through increased objectivity. Given the potential of AI to improve IVF success rates, it remains crucial to review the performance between AI and embryologists during embryo selection.

STUDY DESIGN SIZE DURATION

The search was done across PubMed, EMBASE, Ovid Medline, and IEEE Xplore from 1 June 2005 up to and including 7 January 2022. Included articles were also restricted to those written in English. Search terms utilized across all databases for the study were: ('Artificial intelligence' OR 'Machine Learning' OR 'Deep learning' OR 'Neural network') AND ('IVF' OR ' fertili*' OR 'assisted reproductive techn*' OR 'embryo'), where the character '*' refers the search engine to include any auto completion of the search term.

PARTICIPANTS/MATERIALS SETTING METHODS: A literature search was conducted for literature relating to AI applications to IVF. Primary outcomes of interest were accuracy, sensitivity, and specificity of the embryo morphology grade assessments and the likelihood of clinical outcomes, such as clinical pregnancy after IVF treatments. Risk of bias was assessed using the Modified Down and Black Checklist.

MAIN RESULTS AND THE ROLE OF CHANCE

Twenty articles were included in this review. There was no specific embryo assessment day across the studies-Day 1 until Day 5/6 of embryo development was investigated. The types of input for training AI algorithms were images and time-lapse (10/20), clinical information (6/20), and both images and clinical information (4/20). Each AI model demonstrated promise when compared to an embryologist's visual assessment. On average, the models predicted the likelihood of successful clinical pregnancy with greater accuracy than clinical embryologists, signifying greater reliability when compared to human prediction. The AI models performed at a median accuracy of 75.5% (range 59-94%) on predicting embryo morphology grade. The correct prediction (Ground Truth) was defined through the use of embryo images according to post embryologists' assessment following local respective guidelines. Using blind test datasets, the embryologists' accuracy prediction was 65.4% (range 47-75%) with the same ground truth provided by the original local respective assessment. Similarly, AI models had a median accuracy of 77.8% (range 68-90%) in predicting clinical pregnancy through the use of patient clinical treatment information compared to 64% (range 58-76%) when performed by embryologists. When both images/time-lapse and clinical information inputs were combined, the median accuracy by the AI models was higher at 81.5% (range 67-98%), while clinical embryologists had a median accuracy of 51% (range 43-59%).

LIMITATIONS REASONS FOR CAUTION

The findings of this review are based on studies that have not been prospectively evaluated in a clinical setting. Additionally, a fair comparison of all the studies were deemed unfeasible owing to the heterogeneity of the studies, development of the AI models, database employed and the study design and quality.

WIDER IMPLICATIONS OF THE FINDINGS

AI provides considerable promise to the IVF field and embryo selection. However, there needs to be a shift in developers' perception of the clinical outcome from successful implantation towards ongoing pregnancy or live birth. Additionally, existing models focus on locally generated databases and many lack external validation.

STUDY FUNDING/COMPETING INTERESTS: This study was funded by Monash Data Future Institute. All authors have no conflicts of interest to declare.

REGISTRATION NUMBER

CRD42021256333.

摘要

研究问题

与胚胎学家进行的标准胚胎选择相比,人工智能(AI)决策支持在胚胎选择过程中的当前表现如何?

总结答案

在所有专注于胚胎选择评估期间胚胎形态和临床结局预测的研究中,人工智能始终优于临床团队。

已知信息

辅助生殖技术的成功率约为30%,令人担忧的是,女性年龄增加与结果明显变差之间存在关联趋势。因此,人们一直在努力通过开发新技术来解决这种低成功率问题。随着人工智能的出现,机器学习有潜力以这样一种方式应用,即受人类主观性限制的领域,如胚胎选择,可以通过提高客观性得到改善。鉴于人工智能提高体外受精成功率的潜力,在胚胎选择过程中审视人工智能与胚胎学家之间的表现仍然至关重要。

研究设计、规模、持续时间:检索了2005年6月1日至2022年1月7日(含该日)期间的PubMed、EMBASE、Ovid Medline和IEEE Xplore数据库。纳入的文章也仅限于用英文撰写的文章。在所有数据库中用于该研究的检索词为:(“人工智能”或“机器学习”或“深度学习”或“神经网络”)与(“体外受精”或“受精*”或“辅助生殖技术*”或“胚胎”),其中字符“*”表示搜索引擎包括检索词的任何自动完成形式。

参与者/材料、设置、方法:对与人工智能应用于体外受精的文献进行了检索。感兴趣的主要结局是胚胎形态学分级评估的准确性、敏感性和特异性,以及临床结局的可能性,如体外受精治疗后的临床妊娠。使用改良的Down和Black清单评估偏倚风险。

主要结果及机遇的作用

本综述纳入了20篇文章。各研究中没有特定的胚胎评估日——研究了胚胎发育第1天至第5/6天。训练人工智能算法的输入类型为图像和延时图像(10/20)、临床信息(6/20)以及图像和临床信息两者(4/20)。与胚胎学家的视觉评估相比,每个人工智能模型都显示出前景。平均而言,这些模型预测临床妊娠成功的可能性比临床胚胎学家更准确,这表明与人类预测相比可靠性更高。人工智能模型在预测胚胎形态学分级方面的中位准确率为75.5%(范围59 - 94%)。根据当地各自的指南,在胚胎学家评估后,通过使用胚胎图像定义正确预测(真实情况)。使用盲法测试数据集,胚胎学家的准确率预测为65.4%(范围47 - 75%),与原始当地各自评估提供的相同真实情况一致。同样,人工智能模型通过使用患者临床治疗信息预测临床妊娠的中位准确率为77.8%(范围68 - 90%),而胚胎学家进行预测时的准确率为64%(范围58 - 76%)。当图像/延时图像和临床信息输入相结合时,人工智能模型的中位准确率更高,为81.5%(范围67 - 98%),而临床胚胎学家的中位准确率为51%(范围43 - 59%)。

局限性、谨慎的理由:本综述的结果基于尚未在临床环境中进行前瞻性评估的研究。此外,由于研究的异质性、人工智能模型的开发、所使用的数据库以及研究设计和质量,对所有研究进行公平比较被认为是不可行的。

研究结果的更广泛影响

人工智能为体外受精领域和胚胎选择带来了巨大的前景。然而,开发者对临床结局的认知需要从成功着床转向持续妊娠或活产。此外,现有模型侧重于本地生成的数据库,许多模型缺乏外部验证。

研究资金/利益冲突:本研究由莫纳什数据未来研究所资助。所有作者均无利益冲突声明。

注册号

CRD42021256333

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c5c6/10426717/06421466422f/hoad031f1.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验