Info hash | 1561a180b11d4b746273b5ce46772ad36f1229b6 |
Last mirror activity | 3:51 ago |
Size | 8.06GB (8,061,211,742 bytes) |
Added | 2018-11-13 14:09:45 |
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Hits | 2251 |
ID | 4036 |
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Type: Dataset
Tags:
Bibtex:
Tags:
Bibtex:
@article{, title= {The PatchCamelyon benchmark dataset (PCAM)}, keywords= {}, author= {Bas Veeling}, abstract= {The PatchCamelyon benchmark is a new and challenging image classification dataset. It consists of 327.680 color images (96 x 96px) extracted from histopathologic scans of lymph node sections. Each image is annoted with a binary label indicating presence of metastatic tissue. PCam provides a new benchmark for machine learning models: bigger than CIFAR10, smaller than imagenet, trainable on a single GPU. ## Why PCam Fundamental machine learning advancements are predominantly evaluated on straight-forward natural-image classification datasets. Think MNIST, CIFAR, SVHN. Medical imaging is becoming one of the major applications of ML and we believe it deserves a spot on the list of go-to ML datasets. Both to challenge future work, and to steer developments into directions that are beneficial for this domain. We think PCam can play a role in this. It packs the clinically-relevant task of metastasis detection into a straight-forward binary image classification task, akin to CIFAR-10 and MNIST. Models can easily be trained on a single GPU in a couple hours, and achieve competitive scores in the Camelyon16 tasks of tumor detection and WSI diagnosis. Furthermore, the balance between task-difficulty and tractability makes it a prime suspect for fundamental machine learning research on topics as active learning, model uncertainty and explainability. https://github.com/basveeling/pcam/raw/master/pcam.jpg }, terms= {}, license= {}, superseded= {}, url= {https://github.com/basveeling/pcam} }