Deep multiple instance learning for predicting chemotherapy response in non-small cell lung cancer using pretreatment CT images

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作者
Runsheng Chang
Shouliang Qi
Yanan Wu
Qiyuan Song
Yong Yue
Xiaoye Zhang
Yubao Guan
Wei Qian
机构
[1] Northeastern University,College of Medicine and Biological Information Engineering
[2] Northeastern University,Key Laboratory of Intelligent Computing in Medical Image, Ministry of Education
[3] Shengjing Hospital of China Medical University,Department of Radiology
[4] Shengjing Hospital of China Medical University,Department of Oncology
[5] The Fifth Affiliated Hospital of Guangzhou Medical University,Department of Radiology
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The individual prognosis of chemotherapy is quite different in non-small cell lung cancer (NSCLC). There is an urgent need to precisely predict and assess the treatment response. To develop a deep multiple-instance learning (DMIL) based model for predicting chemotherapy response in NSCLC in pretreatment CT images. Two datasets of NSCLC patients treated with chemotherapy as the first-line treatment were collected from two hospitals. Dataset 1 (163 response and 138 nonresponse) was used to train, validate, and test the DMIL model and dataset 2 (22 response and 20 nonresponse) was used as the external validation cohort. Five backbone networks in the feature extraction module and three pooling methods were compared. The DMIL with a pre-trained VGG16 backbone and an attention mechanism pooling performed the best, with an accuracy of 0.883 and area under the curve (AUC) of 0.982 on Dataset 1. While using max pooling and convolutional pooling, the AUC was 0.958 and 0.931, respectively. In Dataset 2, the best DMIL model produced an accuracy of 0.833 and AUC of 0.940. Deep learning models based on the MIL can predict chemotherapy response in NSCLC using pretreatment CT images and the pre-trained VGG16 with attention mechanism pooling yielded better predictions.
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