利用图像处理软件和训练有素的人工智能对人类卵巢组织中的卵泡进行定量。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Gabrielle M Blevins, Colleen L Flanagan, Sridula S Kallakuri, Owen M Meyer, Likitha Nimmagadda, James D Hatch, Sydney A Shea, Vasantha Padmanabhan, Ariella Shikanov
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引用次数: 0

摘要

近几十年来,由于治疗方法越来越有效,青春期前少女和年轻女性的癌症存活率有所上升。然而,许多此类治疗都具有性腺毒性,会导致卵巢早衰(POI)、丧失生育能力和卵巢内分泌功能。植入免疫隔离胶囊包裹的供体卵巢组织是一种有希望恢复生理内分泌功能的方法,而不会产生免疫抑制或再次引入组织所携带的癌细胞的风险。这种方法的成功与否在很大程度上取决于植入卵巢组织中的卵泡密度(FD),而卵泡密度需要人工从组织切片中进行分析,因此需要专业、耗时的劳动力。为了解决这一局限性,我们开发了一种无需额外编码的全自动量化 FD 方法。我们首先使用半自动图像处理技术分析了 12 名年龄在 16 至 37 岁之间的人类捐献者的卵巢组织,并进行了人工卵泡标注,然后根据卵泡识别和对象分类训练了人工智能程序。一名操作员手动分析了来自连续组织切片的 102 张全切片图像(WSI)。其中 77 张图像由第二位人工操作员进行评估,然后使用人工智能 (AI) 自动方法进行评估。在对照操作员统计的 1181 个卵泡中,对比操作员统计了 1178 个,而人工智能统计了 927 个卵泡,其中 80% 被正确识别为卵泡。三级人工智能管道的完成速度比人工标注快 33%。总之,本报告支持使用人工智能和自动化技术来选择组织捐献者和移植物,以确保 POI 治疗中移植物的寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantification of follicles in human ovarian tissue using image processing software and trained artificial intelligence†.

Cancer survival rates in prepubertal girls and young women have risen in recent decades due to increasingly efficient treatments. However, many such treatments are gonadotoxic, causing premature ovarian insufficiency, loss of fertility, and ovarian endocrine function. Implantation of donor ovarian tissue encapsulated in immune-isolating capsules is a promising method to restore physiological endocrine function without immunosuppression or risk of reintroducing cancer cells harbored by the tissue. The success of this approach is largely determined by follicle density in the implanted ovarian tissue, which is analyzed manually from histologic sections and necessitates specialized, time-consuming labor. To address this limitation, we developed a fully automated method to quantify follicle density that does not require additional coding. We first analyzed ovarian tissue from 12 human donors between 16 and 37 years old using semi-automated image processing with manual follicle annotation and then trained artificial intelligence program based on follicle identification and object classification. One operator manually analyzed 102 whole slide images from serial histologic sections. Of those, 77 images were assessed by a second manual operator, followed with an automated method utilizing artificial intelligence. Of the 1181 follicles the control operator counted, the comparison operator counted 1178, and the artificial intelligence counted 927 follicles with 80% of those being correctly identified as follicles. The three-stage artificial intelligence pipeline finished 33% faster than manual annotation. Collectively, this report supports the use of artificial intelligence and automation to select tissue donors and grafts with the greatest follicle density to ensure graft longevity for premature ovarian insufficiency treatment.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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