Time‐Series MR Images Identifying Complete Response to Neoadjuvant Chemotherapy in Breast Cancer Using a Deep Learning Approach

Author:

Liu Jialing1,Li Xu2,Wang Gang3,Zeng Weixiong1,Zeng Hui1,Wen Chanjuan1,Xu Weimin1,He Zilong1,Qin Genggeng1,Chen Weiguo1

Affiliation:

1. Department of Radiology, Nanfang Hospital Southern Medical University Guangzhou Guangdong Province China

2. Department of Radiotherapy, Sun Yat‐sen Memorial Hospital Sun Yat‐sen University Guangzhou Guangdong Province China

3. Department of Radiology, The Tenth Affiliated Hospital Southern Medical University (Dongguan People's Hospital) Dongguan Guangdong Province China

Abstract

BackgroundPathological complete response (pCR) is an essential criterion for adjusting follow‐up treatment plans for patients with breast cancer (BC). The value of the visual geometry group and long short‐term memory (VGG‐LSTM) network using time‐series dynamic contrast‐enhanced magnetic resonance imaging (DCE‐MRI) for pCR identification in BC is unclear.PurposeTo identify pCR to neoadjuvant chemotherapy (NAC) using deep learning (DL) models based on the VGG‐LSTM network.Study TypeRetrospective.PopulationCenter A: 235 patients (47.7 ± 10.0 years) were divided 7:3 into training (n = 164) and validation set (n = 71). Center B: 150 patients (48.5 ± 10.4 years) were used as test set.Field Strength/Sequence3‐T, T2‐weighted spin‐echo sequence imaging, and gradient echo DCE sequence imaging.AssessmentPatients underwent MRI examinations at three sequential time points: pretreatment, after three cycles of treatment, and prior to surgery, with tumor regions of interest manually delineated. Histopathology was the gold standard. We used VGG‐LSTM network to establish seven DL models using time‐series DCE‐MR images: pre‐NAC images (t0 model), early NAC images (t1 model), post‐NAC images (t2 model), pre‐NAC and early NAC images (t0 + t1 model), pre‐NAC and post‐NAC images (t0 + t2 model), pre‐NAC, early NAC and post‐NAC images (t0 + t1 + t2 model), and the optimal model combined with the clinical features and imaging features (combined model). The models were trained and optimized on the training and validation set, and tested on the test set.Statistical TestsThe DeLong, Student's t‐test, Mann–Whitney U, Chi‐squared, Fisher's exact, Hosmer–Lemeshow tests, decision curve analysis, and receiver operating characteristics analysis were performed. P < 0.05 was considered significant.ResultsCompared with the other six models, the combined model achieved the best performance in the test set yielding an AUC of 0.927.Data ConclusionThe combined model that used time‐series DCE‐MR images, clinical features and imaging features shows promise for identifying pCR in BC.Level of Evidence4.Technical EfficacyStage 4.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Guangdong Province

Bureau of Science and Technology of Ganzhou Municipality

Publisher

Wiley

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