生成2.5D病理,增强观察和人工智能诊断。

Q2 Medicine
Journal of Pathology Informatics Pub Date : 2025-07-18 eCollection Date: 2025-08-01 DOI:10.1016/j.jpi.2025.100463
Ekaterina Redekop, Mara Pleasure, Zichen Wang, Anthony Sisk, Yang Zong, Kimberly Flores, William Speier, Corey W Arnold
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引用次数: 0

摘要

病理学家对活检样本的组织学分析可能需要对复杂的三维(3D)组织结构进行评估。这个过程涉及到在不同的幻灯片上研究相同的组织区域,这需要费力地缩放和平移定位。此外,标准的深度学习框架通常侧重于活检标本的横截面,限制了它们捕获3D组织空间信息的能力。我们提出了一个新的框架,构建2.5D活检芯通过提取和使用新的形态保持对齐框架序列组织切片共对准。这些2.5D内核可用于病理学家的增强观察,并作为视频变压器模型的输入,可以捕获深度范围内的空间依赖性。我们使用我们的框架构建2.5D核,用于10,210例前列腺活检,156例乳腺活检和1869例肾脏活检。为了评估核心在下游任务中的效用,我们通过以下方式对前列腺癌进行了额外的研究:(1)训练基于深度学习的癌症分级模型;(2)与病理学家进行读者研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating 2.5D pathology for enhanced viewing and AI diagnosis.

Histological analysis of biopsy samples by pathologists can require the evaluation of complex three-dimensional (3D) tissue structures. This process involves studying the same tissue region across slides, which requires laborious zooming and panning for localization. Additionally, standard deep learning frameworks typically focus on cross-sections cut from biopsy specimens, limiting their ability to capture 3D tissue spatial information. We present a novel framework that constructs 2.5D biopsy cores via the extraction and co-alignment of serial tissue sections using a novel morphology-preserving alignment framework. These 2.5D cores can then be used for enhanced viewing by pathologists and as input to video transformer models that can capture depth-wide spatial dependencies. We used our framework to construct 2.5D cores for 10,210 prostate biopsies, 156 breast biopsies, and 1869 renal biopsies. To evaluate the utility of the cores for downstream tasks, we performed additional studies in prostate cancer by: (1) training a deep learning-based cancer grading model and (2) conducting a reader study with pathologists.

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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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