TL;DR
This paper introduces a memory-efficient, end-to-end deep learning approach using whole-slide images with only slide-level labels to detect prostate cancer, eliminating the need for detailed annotations.
Contribution
It presents a streaming convolutional neural network training method that enables high-resolution whole-slide image analysis without manual pixel-level annotations.
Findings
Achieved performance comparable to state-of-the-art methods.
Reduced GPU memory requirements by 2.4 TB.
Demonstrated effective learning from slide-level labels.
Abstract
Prostate cancer is the most prevalent cancer among men in Western countries, with 1.1 million new diagnoses every year. The gold standard for the diagnosis of prostate cancer is a pathologists' evaluation of prostate tissue. To potentially assist pathologists deep-learning-based cancer detection systems have been developed. Many of the state-of-the-art models are patch-based convolutional neural networks, as the use of entire scanned slides is hampered by memory limitations on accelerator cards. Patch-based systems typically require detailed, pixel-level annotations for effective training. However, such annotations are seldom readily available, in contrast to the clinical reports of pathologists, which contain slide-level labels. As such, developing algorithms which do not require manual pixel-wise annotations, but can learn using only the clinical report would be a significant…
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