A multi-task fusion model based on a residual-Multi-layer perceptron network for mammographic breast cancer screening.

Comput Methods Programs Biomed

Department of Radiology, China-Japan Union Hospital, Jilin University, Changchun 130033, PR China.

Published: April 2024

AI Article Synopsis

  • Deep learning is increasingly being used in medical computer-aided diagnosis, specifically for tasks like lesion segmentation and predicting benign states in breast cancer screening.
  • A multi-task fusion model was developed to improve diagnosis by combining multiple tasks, allowing for a more comprehensive analysis of mammograms.
  • This model showed superior performance in breast cancer screening compared to existing models, with high accuracy scores, and provides valuable radiological insights and risk assessments for radiologists.

Article Abstract

Background And Objective: Deep learning approaches are being increasingly applied for medical computer-aided diagnosis (CAD). However, these methods generally target only specific image-processing tasks, such as lesion segmentation or benign state prediction. For the breast cancer screening task, single feature extraction models are generally used, which directly extract only those potential features from the input mammogram that are relevant to the target task. This can lead to the neglect of other important morphological features of the lesion as well as other auxiliary information from the internal breast tissue. To obtain more comprehensive and objective diagnostic results, in this study, we developed a multi-task fusion model that combines multiple specific tasks for CAD of mammograms.

Methods: We first trained a set of separate, task-specific models, including a density classification model, a mass segmentation model, and a lesion benignity-malignancy classification model, and then developed a multi-task fusion model that incorporates all of the mammographic features from these different tasks to yield comprehensive and refined prediction results for breast cancer diagnosis.

Results: The experimental results showed that our proposed multi-task fusion model outperformed other related state-of-the-art models in both breast cancer screening tasks in the publicly available datasets CBIS-DDSM and INbreast, achieving a competitive screening performance with area-under-the-curve scores of 0.92 and 0.95, respectively.

Conclusions: Our model not only allows an overall assessment of lesion types in mammography but also provides intermediate results related to radiological features and potential cancer risk factors, indicating its potential to offer comprehensive workflow support to radiologists.

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Source
http://dx.doi.org/10.1016/j.cmpb.2024.108101DOI Listing

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