组织病理学和细胞病理学中的图像分析:从早期到当前展望》。

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-10-14 DOI:10.3390/jimaging10100252
Tibor Mezei, Melinda Kolcsár, András Joó, Simona Gurzu
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引用次数: 0

摘要

病理学和细胞病理学仍然依赖于对显微镜下形态特征的识别,而图像分析在其中扮演着至关重要的角色,可对显微图像中的不同组织类型、细胞群和疾病状态进行识别、分类和定性。一直以来,人工方法是主要方法,依靠病理学家的专业知识和经验来解读显微组织样本。早期的图像分析方法往往受到计算能力和生物样本复杂性的限制。计算机和数字成像技术的出现挑战了人眼视觉和大脑计算能力的独占性,改变了这些领域的诊断过程。病理图像的数字化程度不断提高,使得计算机辅助分析技术的应用更加客观和高效。数字病理学、机器学习和先进成像技术的融合带来了重大进步。机器学习的不断进步和数字病理数据的日益普及为未来提供了令人兴奋的机遇。此外,人工智能也为这一领域带来了革命性的变化,使预测模型能够协助诊断决策。据预测,病理学和细胞病理学的未来将以计算机辅助图像分析的进步为标志。图像分析的未来大有可为,数字病理数据的日益普及必然会提高诊断的准确性,改善预后预测,从而形成个性化的治疗策略,最终为患者带来更好的治疗效果。
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Image Analysis in Histopathology and Cytopathology: From Early Days to Current Perspectives.

Both pathology and cytopathology still rely on recognizing microscopical morphologic features, and image analysis plays a crucial role, enabling the identification, categorization, and characterization of different tissue types, cell populations, and disease states within microscopic images. Historically, manual methods have been the primary approach, relying on expert knowledge and experience of pathologists to interpret microscopic tissue samples. Early image analysis methods were often constrained by computational power and the complexity of biological samples. The advent of computers and digital imaging technologies challenged the exclusivity of human eye vision and brain computational skills, transforming the diagnostic process in these fields. The increasing digitization of pathological images has led to the application of more objective and efficient computer-aided analysis techniques. Significant advancements were brought about by the integration of digital pathology, machine learning, and advanced imaging technologies. The continuous progress in machine learning and the increasing availability of digital pathology data offer exciting opportunities for the future. Furthermore, artificial intelligence has revolutionized this field, enabling predictive models that assist in diagnostic decision making. The future of pathology and cytopathology is predicted to be marked by advancements in computer-aided image analysis. The future of image analysis is promising, and the increasing availability of digital pathology data will invariably lead to enhanced diagnostic accuracy and improved prognostic predictions that shape personalized treatment strategies, ultimately leading to better patient outcomes.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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