4.7 Article

Multi-level progressive transfer learning for cervical cancer dose prediction

Journal

PATTERN RECOGNITION
Volume 141, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2023.109606

Keywords

Radiation therapy; Dose prediction; Transfer learning; Deep neural network

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Recently, deep learning has made significant progress in automating radiation therapy planning and improving its quality and efficiency. However, this progress requires a large amount of clinical data. For low-incidence cancers like cervical cancer, where limited data is available, current data-hungry deep models fail to achieve satisfactory performance. In this paper, we propose a transfer learning approach to transfer knowledge from rectum cancer to cervical cancer for dose map prediction. Our method utilizes a two-phase paradigm and two specialized modules to overcome the negative transferring problem and achieve exemplary performance.
Recently, deep learning has accomplished the automation of radiation therapy planning, enhancing its quality and efficiency. However, such progress comes at the cost of a large amount of clinical data. For some low-incidence cancers, i.e., cervical cancer, with limited available data, current data-hungry deep models fail to achieve satisfactory performance. To address this, in this paper, considering that cervical cancer and rectum cancer share the same scanning area and organs at risk (OARs), we resort to trans-fer learning to transfer the knowledge acquired from rectum cancer (source domain) to cervical cancer (target domain) to perform dose map prediction task. To overcome the possible negative transferring problem, we design a two-phase paradigm to progressively transfer knowledge. In the first phase, we ag-gregate the data of the two domains by linear interpolation and pre-train an aggregated network with the aggregated data to perceive the target dose distribution beforehand. In the second phase, we elaborately design two modules, i.e., a Feature-level Transfer (FT) Module, and an Image-level Transfer (IT) Module, to selectively transfer knowledge in multi-level. Specifically, the FT module aims to preserve those fil-ters that are more helpful while the IT module tries to highlight those samples with more target-specific knowledge. Extensive experiments proclaim the exemplary performance of our proposed method com-pared with other state-of-the-art methods.(c) 2023 Elsevier Ltd. All rights reserved.

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