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Transfer Learning with Partial Observability Applied to Cervical Cancer Screening

机译:用部分观察性转移学习,适用于宫颈癌筛查

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Cervical cancer remains a significant cause of mortality in low-income countries. As in many other diseases, the existence of several screening/diagnosis methods and subjective physician preferences creates a complex ecosystem for automated methods. In order to diminish the amount of labeled data from each modality/expert we propose a regularization-based transfer learning strategy that encourages source and target models to share the same coefficient signs. We instantiated the proposed framework to predict cross-modality individual risk and cross-expert subjective quality assessment of colposcopic images for different modalities. Thus, we are able to transfer knowledge gained from one expert/modality to another.
机译:宫颈癌仍然是低收入国家死亡率的重要原因。与许多其他疾病一样,若干筛选/诊断方法的存在和主观医生偏好为自动方法创建了复杂的生态系统。为了减少来自每个模态/专家的标记数据的量,我们提出了一种基于正规化的转移学习策略,鼓励源和目标模型共享相同的系数迹象。我们实例化了拟议的框架,以预测不同方式对阴道镜图像的跨模型个人风险和跨专家主观评估。因此,我们能够将从一个专家/模型中获得的知识转移到另一个专家/码头。

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