推进健康 4.0 中的组织病理学:利用深度学习和分析分类器加强细胞核检测

IF 4.1 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
S. Pons, E. Dura, J. Domingo, S. Martin
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引用次数: 0

摘要

本研究通过提高组织病理学图像中细胞核检测的精确度(这是数字病理学的关键步骤),为 "健康 4.0 "范式做出了贡献。所提出的方法的特点是将深度学习与传统的分析分类器相结合。虽然深度学习通过提供快速准确的检测彻底改变了这一过程,但其黑箱性质往往导致缺乏可解释性。我们的研究采用 YOLOv5 框架进行初始核检测,然后进入分析阶段,将表现不佳的病例分离出来并重新训练,以增强模型的鲁棒性,从而弥补了这一不足。此外,我们还引入了一个逻辑回归分类器,该分类器结合使用颜色和纹理特征来区分分析结果令人满意和不令人满意的图像。通过整合这些先进的分析技术,我们的工作符合健康 4.0 计划的目标,即利用数字创新提升医疗质量。这项研究为更加透明、高效和可靠的数字病理学实践铺平了道路,凸显了智能技术在健康 4.0 框架内增强诊断流程的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Advancing histopathology in Health 4.0: Enhanced cell nuclei detection using deep learning and analytic classifiers

Advancing histopathology in Health 4.0: Enhanced cell nuclei detection using deep learning and analytic classifiers

Advancing histopathology in Health 4.0: Enhanced cell nuclei detection using deep learning and analytic classifiers

This study contributes to the Health 4.0 paradigm by enhancing the precision of cell nuclei detection in histopathological images, a critical step in digital pathology. The presented approach is characterized by the combination of deep learning with traditional analytic classifiers.

Traditional methods in histopathology rely heavily on manual inspection by expert histopathologists. While deep learning has revolutionized this process by offering rapid and accurate detections, its black-box nature often results in a lack of interpretability. This can be a significant hindrance in clinical settings where understanding the rationale behind predictions is crucial for decision-making and quality assurance.

Our research addresses this gap by employing the YOLOv5 framework for initial nuclei detection, followed by an analysis phase where poorly performing cases are isolated and retrained to enhance model robustness. Furthermore, we introduce a logistic regression classifier that uses a combination of color and textural features to discriminate between satisfactorily and unsatisfactorily analyzed images. This dual approach not only improves detection accuracy but also provides insights into model performance variations, fostering a layer of interpretability absent in most deep learning applications.

By integrating these advanced analytical techniques, our work aligns with the Health 4.0 initiative’s goals of leveraging digital innovations to elevate healthcare quality. This study paves the way for more transparent, efficient, and reliable digital pathology practices, underscoring the potential of smart technologies in enhancing diagnostic processes within the Health 4.0 framework.

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来源期刊
Computer Standards & Interfaces
Computer Standards & Interfaces 工程技术-计算机:软件工程
CiteScore
11.90
自引率
16.00%
发文量
67
审稿时长
6 months
期刊介绍: The quality of software, well-defined interfaces (hardware and software), the process of digitalisation, and accepted standards in these fields are essential for building and exploiting complex computing, communication, multimedia and measuring systems. Standards can simplify the design and construction of individual hardware and software components and help to ensure satisfactory interworking. Computer Standards & Interfaces is an international journal dealing specifically with these topics. The journal • Provides information about activities and progress on the definition of computer standards, software quality, interfaces and methods, at national, European and international levels • Publishes critical comments on standards and standards activities • Disseminates user''s experiences and case studies in the application and exploitation of established or emerging standards, interfaces and methods • Offers a forum for discussion on actual projects, standards, interfaces and methods by recognised experts • Stimulates relevant research by providing a specialised refereed medium.
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