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一种使用智能手机拍摄图像识别肝脂肪变性的新型数字算法。

A Novel Digital Algorithm for Identifying Liver Steatosis Using Smartphone-Captured Images.

作者信息

Xu Katherine, Raigani Siavash, Shih Angela, Baptista Sofia G, Rosales Ivy, Parry Nicola M, Shroff Stuti G, Misdraji Joseph, Uygun Korkut, Yeh Heidi, Fairchild Katherine, Anne Dageforde Leigh

机构信息

Quest for Intelligence, College of Computing, Massachusetts Institute of Technology, Cambridge, MA.

Division of Transplant Surgery, Massachusetts General Hospital, Boston, MA.

出版信息

Transplant Direct. 2022 Aug 4;8(9):e1361. doi: 10.1097/TXD.0000000000001361. eCollection 2022 Sep.

Abstract

UNLABELLED

Access to lifesaving liver transplantation is limited by a severe organ shortage. One factor contributing to the shortage is the high rate of discard in livers with histologic steatosis. Livers with <30% macrosteatosis are generally considered safe for transplant. However, histologic assessment of steatosis by a pathologist remains subjective and is often limited by image quality. Here, we address this bottleneck by creating an automated digital algorithm for calculating histologic steatosis using only images of liver biopsy histology obtained with a smartphone.

METHODS

Multiple images of frozen section liver histology slides were captured using a smartphone camera via the optical lens of a simple light microscope. Biopsy samples from 80 patients undergoing liver transplantation were included. An automated digital algorithm was designed to capture and count steatotic droplets in liver tissue while discounting areas of vascular lumen, white space, and processing artifacts. Pathologists of varying experience provided steatosis scores, and results were compared with the algorithm's assessment. Interobserver agreement between pathologists was also assessed.

RESULTS

Interobserver agreement between all pathologists was very low but increased with specialist training in liver pathology. A significant linear relationship was found between steatosis estimates of the algorithm compared with expert liver pathologists, though the latter had consistently higher estimates.

CONCLUSIONS

This study demonstrates proof of the concept that smartphone-captured images can be used in conjunction with a digital algorithm to measure steatosis. Integration of this technology into the transplant workflow may significantly improve organ utilization rates.

摘要

未标注

获得挽救生命的肝移植受到严重器官短缺的限制。导致这种短缺的一个因素是组织学上有脂肪变性的肝脏被丢弃的比例很高。脂肪变性小于30%的肝脏通常被认为可安全用于移植。然而,病理学家对脂肪变性的组织学评估仍然主观,并且常常受图像质量的限制。在此,我们通过创建一种仅使用智能手机获取的肝活检组织学图像来计算组织学脂肪变性的自动数字算法,解决了这一瓶颈问题。

方法

使用智能手机摄像头通过简单光学显微镜的光学镜头拍摄冷冻切片肝组织学玻片的多张图像。纳入了80例接受肝移植患者的活检样本。设计了一种自动数字算法来捕获和计数肝组织中的脂肪变性液滴,同时排除血管腔、空白区域和处理伪像区域。不同经验的病理学家给出脂肪变性评分,并将结果与算法的评估进行比较。还评估了病理学家之间的观察者间一致性。

结果

所有病理学家之间的观察者间一致性很低,但随着肝脏病理学专业培训而提高。与肝脏病理专家相比,算法的脂肪变性估计值之间存在显著的线性关系,不过后者的估计值始终更高。

结论

本研究证明了一个概念,即智能手机拍摄的图像可与数字算法结合使用来测量脂肪变性。将该技术整合到移植工作流程中可能会显著提高器官利用率。

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