AI-algorithm training and validation for identification of endometrial CD138+ cells in infertility-associated conditions; polycystic ovary syndrome (PCOS) and recurrent implantation failure (RIF)

Seungbaek Lee , Riikka K. Arffman , Elina K. Komsi , Outi Lindgren , Janette A. Kemppainen , Hanna Metsola , Henna-Riikka Rossi , Anne Ahtikoski , Keiu Kask , Merli Saare , Andres Salumets , Terhi T. Piltonen
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Abstract

Background

Endometrial CD138+ plasma cells serve as a diagnostic biomarker for endometrial inflammation, and their elevated occurrence correlates positively with adverse pregnancy outcomes. Infertility-related conditions like polycystic ovary syndrome (PCOS) and recurrent implantation failure (RIF) are closely associated with systemic and local chronic inflammatory status, wherein endometrial CD138+ plasma cell accumulation could also contribute to endometrial pathology. Current methods for quantifying CD138+ cells typically involve laborious and time-consuming microscopic assessments of only a few random areas from a slide. These methods have limitations in accurately representing the entire slide and are susceptible to significant biases arising from intra- and interobserver variations. Implementing artificial intelligence (AI) for CD138+ cell identification could enhance the accuracy, reproducibility, and reliability of analysis.

Methods

Here, an AI algorithm was developed to identify CD138+ plasma cells within endometrial tissue. The AI model comprised two layers of convolutional neural networks (CNNs). CNN1 was trained to segment epithelium and stroma across 28,363 mm2 (2.56 mm2 of epithelium and 24.87 mm2 of stroma), while CNN2 was trained to distinguish stromal cells based on CD138 staining, encompassing 7345 cells in the object layers (6942 CD138− cells and 403 CD138+ cells). The training and performance of the AI model were validated by three experienced pathologists. We collected 193 endometrial tissues from healthy controls (n = 73), women with PCOS (n = 91), and RIF patients (n = 29) and compared the CD138+ cell percentages based on cycle phases, ovulation status, and endometrial receptivity utilizing the AI model.

Results

The AI algorithm consistently and reliably distinguished CD138− and CD138+ cells, with total error rates of 6.32% and 3.23%, respectively. During the training validation, there was a complete agreement between the decisions made by the pathologists and the AI algorithm, while the performance validation demonstrated excellent accuracy between the AI and human evaluation methods (intraclass correlation; 0.76, 95% confidence intervals; 0.36–0.93, p = 0.002) and a positive correlation (Spearman's rank correlation coefficient: 0.79, p < 0.01). In the AI analysis, the AI model revealed higher CD138+ cell percentages in the proliferative phase (PE) endometrium compared to the secretory phase or anovulatory PCOS endometrium, irrespective of PCOS diagnosis. Interestingly, CD138+ percentages differed according to PCOS phenotype in the PE (p = 0.03). On the other hand, the receptivity status had no impact on the cell percentages in RIF samples.

Conclusion

Our findings emphasize the potential and accuracy of the AI algorithm in detecting endometrial CD138+ plasma cells, offering distinct advantages over manual inspection, such as rapid analysis of whole slide images, reduction of intra- and interobserver variations, sparing the valuable time of trained specialists, and consistent productivity. This supports the application of AI technology to help clinical decision-making, for example, in understanding endometrial cycle phase-related dynamics, as well as different reproductive disorders.

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识别不孕症相关病症(多囊卵巢综合征 (PCOS) 和复发性着床失败 (RIF) 中子宫内膜 CD138+ 细胞的人工智能算法训练和验证
背景子宫内膜 CD138+ 浆细胞是子宫内膜炎症的诊断生物标志物,其发生率升高与不良妊娠结局呈正相关。多囊卵巢综合征(PCOS)和复发性着床失败(RIF)等不孕症相关疾病与全身和局部慢性炎症状态密切相关,而子宫内膜 CD138+ 浆细胞聚集也可能导致子宫内膜病变。目前量化 CD138+ 细胞的方法通常需要在显微镜下对载玻片上的几个随机区域进行费时费力的评估。这些方法在准确反映整个载玻片方面存在局限性,而且容易因观察者内部和观察者之间的差异而产生重大偏差。采用人工智能(AI)进行 CD138+ 细胞鉴定可提高分析的准确性、可重复性和可靠性。人工智能模型由两层卷积神经网络(CNN)组成。CNN1经过训练可分割28,363平方毫米的上皮和基质(2.56平方毫米的上皮和24.87平方毫米的基质),而CNN2经过训练可根据CD138染色区分基质细胞,对象层包括7345个细胞(6942个CD138-细胞和403个CD138+细胞)。三名经验丰富的病理学家对人工智能模型的训练和性能进行了验证。我们收集了来自健康对照组(n = 73)、多囊卵巢综合征妇女(n = 91)和 RIF 患者(n = 29)的 193 份子宫内膜组织,并利用人工智能模型比较了基于周期阶段、排卵状态和子宫内膜接受能力的 CD138+ 细胞百分比。结果人工智能算法能稳定可靠地区分 CD138- 和 CD138+ 细胞,总误差率分别为 6.32% 和 3.23%。在训练验证过程中,病理学家和人工智能算法所做的决定完全一致,而在性能验证中,人工智能和人类评估方法之间的准确性极高(类内相关;0.76,95% 置信区间;0.36-0.93,p = 0.002),且呈正相关(斯皮尔曼等级相关系数:0.79,p <0.01)。在 AI 分析中,AI 模型显示增殖期(PE)子宫内膜的 CD138+ 细胞百分比高于分泌期或无排卵 PCOS 子宫内膜,与 PCOS 诊断无关。有趣的是,PE 中 CD138+ 百分比因 PCOS 表型而异(p = 0.03)。结论我们的研究结果强调了人工智能算法在检测子宫内膜 CD138+ 浆细胞方面的潜力和准确性,与人工检测相比具有明显的优势,如快速分析整张切片图像、减少观察者内部和观察者之间的差异、节省训练有素的专家的宝贵时间以及稳定的生产率。这为应用人工智能技术帮助临床决策提供了支持,例如,在了解子宫内膜周期相位相关动态以及不同生殖疾病方面。
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来源期刊
Journal of Pathology Informatics
Journal of Pathology Informatics Medicine-Pathology and Forensic Medicine
CiteScore
3.70
自引率
0.00%
发文量
2
审稿时长
18 weeks
期刊介绍: The Journal of Pathology Informatics (JPI) is an open access peer-reviewed journal dedicated to the advancement of pathology informatics. This is the official journal of the Association for Pathology Informatics (API). The journal aims to publish broadly about pathology informatics and freely disseminate all articles worldwide. This journal is of interest to pathologists, informaticians, academics, researchers, health IT specialists, information officers, IT staff, vendors, and anyone with an interest in informatics. We encourage submissions from anyone with an interest in the field of pathology informatics. We publish all types of papers related to pathology informatics including original research articles, technical notes, reviews, viewpoints, commentaries, editorials, symposia, meeting abstracts, book reviews, and correspondence to the editors. All submissions are subject to rigorous peer review by the well-regarded editorial board and by expert referees in appropriate specialties.
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