TL;DR
This paper presents a versatile deep learning framework for histopathology image segmentation and analysis, demonstrating high accuracy across multiple cancer datasets and addressing data and model uncertainties.
Contribution
The authors introduce a generalized deep learning framework that effectively handles various histopathology tasks and datasets, with comprehensive uncertainty modeling and cross-dataset validation.
Findings
Achieved high FROC score of 0.86 on CAMELYON16 lesion detection.
Attained Cohen's kappa of 0.9090 on CAMELYON17 pN-staging.
Secured top rankings in multiple challenge datasets for tumor segmentation.
Abstract
Histopathology tissue analysis is considered the gold standard in cancer diagnosis and prognosis. Given the large size of these images and the increase in the number of potential cancer cases, an automated solution as an aid to histopathologists is highly desirable. In the recent past, deep learning-based techniques have provided state of the art results in a wide variety of image analysis tasks, including analysis of digitized slides. However, the size of images and variability in histopathology tasks makes it a challenge to develop an integrated framework for histopathology image analysis. We propose a deep learning-based framework for histopathology tissue analysis. We demonstrate the generalizability of our framework, including training and inference, on several open-source datasets, which include CAMELYON (breast cancer metastases), DigestPath (colon cancer), and PAIP (liver…
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