Whole Slide Imaging, Artificial Intelligence, and Machine Learning in Pediatric and Perinatal Pathology: Current Status and Future Directions.

IF 1.3 4区 医学 Q3 PATHOLOGY
J Ciaran Hutchinson, Jennifer Picarsic, Clare McGenity, Darren Treanor, Bethany Williams, Neil J Sebire
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引用次数: 0

Abstract

The integration of artificial intelligence (AI) into healthcare is becoming increasingly mainstream. Leveraging digital technologies, such as AI and deep learning, impacts researchers, clinicians, and industry due to promising performance and clinical potential. Digital pathology is now a proven technology, enabling generation of high-resolution digital images from glass slides (whole slide images; WSI). WSIs facilitates AI-based image analysis to aid pathologists in diagnostic tasks, improve workflow efficiency, and address workforce shortages. Example applications include tumor segmentation, disease classification, detection, quantitation and grading, rare object identification, and outcome prediction. While advancements have occurred, integration of WSI-AI into clinical laboratories faces challenges, including concerns regarding evidence quality, regulatory adaptations, clinical evaluation, and safety considerations. In pediatric and developmental histopathology, adoption of AI could improve diagnostic efficiency, automate routine tasks, and address specific diagnostic challenges unique to the specialty, such as standardizing placental pathology and developmental autopsy findings, as well as mitigating staffing shortages in the subspeciality. Additionally, AI-based tools have potential to mitigate medicolegal implications by enhancing reproducibility and objectivity in diagnostic evaluations. An overview of recent developments and challenges in applying AI to pediatric and developmental pathology, focusing on machine learning methods applied to WSIs of pediatric pathology specimens is presented.

儿科和围产期病理学中的全切片成像、人工智能和机器学习:现状与未来方向》。
人工智能(AI)与医疗保健的结合正日益成为主流。由于人工智能和深度学习等数字技术具有良好的性能和临床潜力,因此对研究人员、临床医生和行业都产生了影响。数字病理学现已成为一项成熟技术,可从玻璃载玻片生成高分辨率数字图像(全载玻片图像;WSI)。WSIs 可促进基于人工智能的图像分析,帮助病理学家完成诊断任务、提高工作流程效率并解决劳动力短缺问题。应用实例包括肿瘤分割、疾病分类、检测、量化和分级、罕见物识别和结果预测。虽然已经取得了进步,但将 WSI-AI 集成到临床实验室还面临着挑战,包括证据质量、监管适应性、临床评估和安全考虑等方面的问题。在儿科和发育组织病理学领域,采用人工智能可提高诊断效率,实现常规任务自动化,并解决该专业特有的诊断难题,如标准化胎盘病理学和发育解剖结果,以及缓解该亚专业的人员短缺问题。此外,基于人工智能的工具还有可能通过提高诊断评估的可重复性和客观性来减轻医学法律方面的影响。本文概述了将人工智能应用于儿科和发育病理学的最新进展和挑战,重点介绍了应用于儿科病理标本 WSI 的机器学习方法。
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来源期刊
CiteScore
3.70
自引率
5.30%
发文量
59
审稿时长
6-12 weeks
期刊介绍: The Journal covers the spectrum of disorders of early development (including embryology, placentology, and teratology), gestational and perinatal diseases, and all diseases of childhood. Studies may be in any field of experimental, anatomic, or clinical pathology, including molecular pathology. Case reports are published only if they provide new insights into disease mechanisms or new information.
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