腹腔镜手术期间人工智能对子宫内膜异位症病变的自动视觉识别的初步结果:一项概念验证研究。

IF 3.3 2区 医学 Q1 OBSTETRICS & GYNECOLOGY
Antoine Netter, Saman Noorzadeh, Fanny Duchateau, Henrique Abrao, Michel Canis, Adrien Bartoli, Nicolas Bourdel, Saman Noorzadeh, Julie Desternes, Julien Peyras, Jean-Luc Pouly, Mauricio S Abrão, Attila Bokor, Ulrik Bak Kirk, Aubert Agostini, Blandine Courbiere
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引用次数: 0

摘要

目的:建立一种用于腹腔镜手术中子宫内膜异位症病变自动识别的机器学习方法,并评估其可行性和性能。设计:收集和注释手术视频和训练,验证和测试一个深度神经网络。背景:使用来自法国、匈牙利、巴西和丹麦专家中心的手术视频进行多中心概念验证研究。参与者:收集了112名在2020年1月至2023年8月期间因疑似子宫内膜异位症接受腹腔镜手术的患者的手术视频序列。可识别的子宫内膜异位症病变序列被纳入,而质量差的图像和先前手术操作的序列被排除在外。干预措施:训练基于YOLOv5的深度神经网络,对子宫内膜异位症病变的9种视觉分类(浅黑色、浅红色、浅白色、浅细微、膜状粘连、致密粘连、深部子宫内膜异位症、卵巢子宫内膜异位症、卵巢巧克力液)进行检测和分类。结果:该模型对“浅表黑色”、“浅表细微”和“卵巢巧克力液”类(F1评分 = 0.94、0.74和0.75)表现良好,对“致密粘连”、“卵巢子宫内膜异位症”和“深部子宫内膜异位症”类(F1评分 = 0.70、0.63和0.632)表现良好,对“浅表红色”、“浅表白色”和“膜状粘连”类(F1评分 = 0.25、0.18、0.16和0.02)表现较弱。然而,虽然这些结果强调了该模型在识别每个序列的至少一个帧中的大多数病变方面的强大潜力,但它们强调了进一步改进以提高准确性和精度的必要性。结论:本研究证明了人工智能应用于腹腔镜手术中子宫内膜异位症视觉识别的可行性。虽然最初的结果令人鼓舞,但需要进一步的开发来增强模型性能和标准化注释方法。人工智能在手术实践中的整合有望帮助子宫内膜异位症的诊断和改善手术结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Initial results in the automatic visual recognition of endometriosis lesions by artificial intelligence during laparoscopy: a proof-of-concept study.

Objective: To develop a machine learning method for the automatic recognition of endometriosis lesions during laparoscopic surgery and evaluate its feasibility and performance.

Design: Collecting and annotating surgical videos and training, validating, and testing a deep neural network.

Setting: Multicenter proof-of-concept study using surgical videos from expert centers in France, Hungary, Brazil, and Denmark.

Participants: Surgical video sequences were collected from 112 patients who underwent laparoscopic procedures for suspected endometriosis between January 2020 and August 2023. Sequences with identifiable endometriosis lesions were included, while poor-quality images and sequences with prior surgical manipulation were excluded.

Interventions: A deep neural network based on YOLOv5 was trained to detect and classify nine visual classes of endometriosis lesions (superficial black, superficial red, superficial white, superficial subtle, filmy adhesions, dense adhesions, deep endometriosis, ovarian endometrioma, and ovarian chocolate fluid).

Results: The model performance was good for the 'superficial black', 'superficial subtle', and 'ovarian chocolate fluid' classes (F1 score = 0.94, 0.74, and 0.75, respectively), acceptable for the 'dense adhesion', 'ovarian endometrioma' and 'deep endometriosis' classes (F1 score = 0.70, 0.63 and 0.632, respectively), and weak for the 'superficial red', 'superficial white', and 'filmy adhesions' classes (F1 score = 0.25, 0.18, 0.16 and 0.02, respectively). However, while these results highlight the model's strong potential in identifying most lesions in at least one frame of each sequence, they underscore the need for further refinement to improve accuracy and precision.

Conclusion: This study demonstrates the feasibility of applying artificial intelligence for visual recognition of endometriosis during laparoscopic surgery. While the initial results are encouraging, further development is needed to enhance the model performance and standardize the annotation methods. The integration of AI in surgical practice holds promise for assisting in endometriosis diagnosis and improving surgical outcomes.

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来源期刊
CiteScore
5.00
自引率
7.30%
发文量
272
审稿时长
37 days
期刊介绍: The Journal of Minimally Invasive Gynecology, formerly titled The Journal of the American Association of Gynecologic Laparoscopists, is an international clinical forum for the exchange and dissemination of ideas, findings and techniques relevant to gynecologic endoscopy and other minimally invasive procedures. The Journal, which presents research, clinical opinions and case reports from the brightest minds in gynecologic surgery, is an authoritative source informing practicing physicians of the latest, cutting-edge developments occurring in this emerging field.
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