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为产时胎儿心率监测开发可靠人工智能的挑战。

Challenges of Developing Robust AI for Intrapartum Fetal Heart Rate Monitoring.

作者信息

O'Sullivan M E, Considine E C, O'Riordan M, Marnane W P, Rennie J M, Boylan G B

机构信息

INFANT Research Centre, University College Cork, Cork, Ireland.

Department Obstetrics and Gynaecology, University College Cork, Cork, Ireland.

出版信息

Front Artif Intell. 2021 Oct 26;4:765210. doi: 10.3389/frai.2021.765210. eCollection 2021.

Abstract

CTG remains the only non-invasive tool available to the maternity team for continuous monitoring of fetal well-being during labour. Despite widespread use and investment in staff training, difficulty with CTG interpretation continues to be identified as a problem in cases of fetal hypoxia, which often results in permanent brain injury. Given the recent advances in AI, it is hoped that its application to CTG will offer a better, less subjective and more reliable method of CTG interpretation. This mini-review examines the literature and discusses the impediments to the success of AI application to CTG thus far. Prior randomised control trials (RCTs) of CTG decision support systems are reviewed from technical and clinical perspectives. A selection of novel engineering approaches, not yet validated in RCTs, are also reviewed. The review presents the key challenges that need to be addressed in order to develop a robust AI tool to identify fetal distress in a timely manner so that appropriate intervention can be made. The decision support systems used in three RCTs were reviewed, summarising the algorithms, the outcomes of the trials and the limitations. Preliminary work suggests that the inclusion of clinical data can improve the performance of AI-assisted CTG. Combined with newer approaches to the classification of traces, this offers promise for rewarding future development.

摘要

产时电子监护(CTG)仍然是产科团队在分娩期间持续监测胎儿健康状况的唯一非侵入性工具。尽管CTG已广泛应用且对工作人员进行了培训投入,但在胎儿缺氧病例中,CTG解读困难仍然被认为是一个问题,这常常导致永久性脑损伤。鉴于人工智能(AI)的最新进展,人们希望将其应用于CTG能够提供一种更好、主观性更低且更可靠的CTG解读方法。本综述考察了相关文献,并讨论了迄今为止AI应用于CTG取得成功的阻碍。从技术和临床角度对先前关于CTG决策支持系统的随机对照试验(RCT)进行了综述。还对一些尚未在RCT中得到验证的新型工程方法进行了综述。本综述提出了为开发一种强大的AI工具以及时识别胎儿窘迫从而能够进行适当干预而需要解决的关键挑战。对三项RCT中使用的决策支持系统进行了综述,总结了算法、试验结果及局限性。初步研究表明,纳入临床数据可以提高AI辅助CTG的性能。结合更新的胎心率曲线分类方法,这为未来的发展带来了希望。

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