Attention multiple instance learning with Transformer aggregation for breast cancer whole slide image classification
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Jianxin Zhang | Cunqiao Hou | Mingli Zhang | Qiang Zhang | Lizhi Zhang | Y. Zou | Wen Zhu | Wenfang Zhu
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