2024
DOI: 10.3390/app14146186
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HLFSRNN-MIL: A Hybrid Multi-Instance Learning Model for 3D CT Image Classification

Huilong Chen,
Xiaoxia Zhang

Abstract: At present, many diseases are diagnosed by computer tomography (CT) image technology, which affects the health of the lives of millions of people. In the process of disease confrontation, it is very important for patients to detect diseases in the early stage by deep learning of 3D CT images. The paper offers a hybrid multi-instance learning model (HLFSRNN-MIL), which hybridizes high-low frequency feature fusion (HLFFF) with sequential recurrent neural network (SRNN) for CT image classification tasks. Firstly,… Show more

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