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Development and operation of a digital platform for sharing pathology image data

机译:分享病理学图像数据的数字平台的开发和运行

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Artificial intelligence (AI) research is highly dependent on the nature of the data available. With the steady increase of AI applications in the medical field, the demand for quality medical data is increasing significantly. We here describe the development of a platform for providing and sharing digital pathology data to AI researchers, and highlight challenges to overcome in operating a sustainable platform in conjunction with pathologists. Over 3000 pathological slides from five organs (liver, colon, prostate, pancreas and biliary tract, and kidney) in histologically confirmed tumor cases by pathology departments at three hospitals were selected for the dataset. After digitalizing the slides, tumor areas were annotated and overlaid onto the images by pathologists as the ground truth for AI training. To reduce the pathologists’ workload, AI-assisted annotation was established in collaboration with university AI teams. A web-based data sharing platform was developed to share massive pathological image data in 2019. This platform includes 3100 images, and 5 pre-processing algorithms for AI researchers to easily load images into their learning models. Due to different regulations among countries for privacy protection, when releasing internationally shared learning platforms, it is considered to be most prudent to obtain consent from patients during data acquisition. Despite limitations encountered during platform development and model training, the present medical image sharing platform can steadily fulfill the high demand of AI developers for quality data. This study is expected to help other researchers intending to generate similar platforms that are more effective and accessible in the future.
机译:人工智能(AI)研究高度依赖于可用数据的性质。随着AI应用中AI应用的稳定增加,对质量医疗数据的需求显着增加。我们在这里描述了一个开发一个平台,用于向AI研究人员提供和分享数字病理数据,并突出与病理学家一起经营可持续平台的挑战。选择在三家医院的组织学诊断肿瘤病例中,从五个器官(肝脏,结肠,前列腺,前列腺,胰腺和胆汁和胆汁)的3000多种病理载玻片,以便在三家医院中选择了三个医院。在数字化幻灯片后,通过病理学家作为AI培训的基础事实,将肿瘤区域注释并覆盖到图像上。为了减少病理学家的工作量,与大学AI团队合作建立了AI辅助注释。开发了基于Web的数据共享平台以在2019年共享大规模的病理图像数据。该平台包括3100个图像,以及5个用于AI研究人员的预处理算法,以便将图像容易地将图像载入其学习模型中。由于各国之间的规定,在释放国际共享的学习平台时,它被认为是在数据习得期间获得患者同意的最谨慎。尽管在平台开发和模型培训期间遇到了局限性,但目前的医学图像共享平台可以稳定地满足AI开发人员的高质量质量数据。本研究预计有助于其他研究人员打算产生类似的平台,这些平台将来更有效和可访问。

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