重新思考低资源环境下的组织学切片数字化工作流程。

Talat Zehra, Joseph Marino, Wendy Wang, Grigoriy Frantsuzov, Saad Nadeem
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引用次数: 0

摘要

组织学切片数字化对于远程病理学(远程会诊)、知识共享(教育)和使用最先进的人工智能算法(增强/自动化端到端临床工作流程)变得至关重要。然而,数字多幻灯片高速明场扫描仪、云/本地存储和人员(IT和技术人员)的累积成本使得目前的幻灯片数字化工作流程在资源有限的环境中遥不可及,进一步扩大了健康公平差距;由于硬件要求(高分辨率相机,高规格PC/工作站,只支持高端显微镜),即使是单片手动扫描商业解决方案也很昂贵。在这项工作中,我们提出了一种新的云幻灯片数字化工作流程,用于从上载的低质量视频中创建扫描仪质量的全幻灯片图像(wsi),这些视频来自内置摄像头的廉价和廉价显微镜。具体来说,我们提出了一个流水线来创建缝合的wsi,同时自动去模糊失焦区域,将输入的10倍图像上采样到40倍分辨率,并减少亮度/对比度和光源照明变化。我们从世界卫生组织宣布被忽视的热带病、皮肤利什曼病(仅在世界上最贫穷的地区流行,仅由亚专科皮肤病理学家诊断,在贫穷国家很少见)以及乳房、肝脏、十二指肠、胃和淋巴结核心活检的其他常见病理的工作流程中证明了WSI的创建效果。代码和预训练模型可通过GitHub (https://github.com/nadeemlab/DeepLIIF)访问,云平台https://deepliif.org可用于上传显微镜视频和下载/查看具有可共享链接的WSIs(无需登录),用于心灵病理学和知识共享。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rethinking Histology Slide Digitization Workflows for Low-Resource Settings.

Histology slide digitization is becoming essential for telepathology (remote consultation), knowledge sharing (education), and using the state-of-the-art artificial intelligence algorithms (augmented/automated end-to-end clinical workflows). However, the cumulative costs of digital multi-slide high-speed brightfield scanners, cloud/on-premises storage, and personnel (IT and technicians) make the current slide digitization workflows out-of-reach for limited-resource settings, further widening the health equity gap; even single-slide manual scanning commercial solutions are costly due to hardware requirements (high-resolution cameras, high-spec PC/workstation, and support for only high-end microscopes). In this work, we present a new cloud slide digitization workflow for creating scanner-quality whole-slide images (WSIs) from uploaded low-quality videos, acquired from cheap and inexpensive microscopes with built-in cameras. Specifically, we present a pipeline to create stitched WSIs while automatically deblurring out-of-focus regions, upsampling input 10X images to 40X resolution, and reducing brightness/contrast and light-source illumination variations. We demonstrate the WSI creation efficacy from our workflow on World Health Organization-declared neglected tropical disease, Cutaneous Leishmaniasis (prevalent only in the poorest regions of the world and only diagnosed by sub-specialist dermatopathologists, rare in poor countries), as well as other common pathologies on core biopsies of breast, liver, duodenum, stomach and lymph node. The code and pretrained models will be accessible via our GitHub (https://github.com/nadeemlab/DeepLIIF), and the cloud platform will be available at https://deepliif.org for uploading microscope videos and downloading/viewing WSIs with shareable links (no sign-in required) for telepathology and knowledge sharing.

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