Early prediction of neoadjuvant chemotherapy response for advanced breast cancer using PET/MRI image deep learning

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作者
Joon Ho Choi
Hyun-Ah Kim
Wook Kim
Ilhan Lim
Inki Lee
Byung Hyun Byun
Woo Chul Noh
Min-Ki Seong
Seung-Sook Lee
Byung Il Kim
Chang Woon Choi
Sang Moo Lim
Sang-Keun Woo
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[1] University of Ulsan College of Medicine,Department of Nuclear Medicine, Asan Medical Center
[2] Korea Institute of Radiological and Medical Sciences (KIRAMS),Department of Nuclear Medicine, Korea Cancer Center Hospital
[3] Korea Institute of Radiological and Medical Sciences (KIRAMS),Division of RI
[4] Korea Institute of Radiological and Medical Sciences (KIRAMS),Convergence Research
[5] Korea Institute of Radiological and Medical Sciences (KIRAMS),Department of Surgery, Korea Cancer Center Hospital
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This study aimed to investigate the predictive efficacy of positron emission tomography/computed tomography (PET/CT) and magnetic resonance imaging (MRI) for the pathological response of advanced breast cancer to neoadjuvant chemotherapy (NAC). The breast PET/MRI image deep learning model was introduced and compared with the conventional methods. PET/CT and MRI parameters were evaluated before and after the first NAC cycle in patients with advanced breast cancer [n = 56; all women; median age, 49 (range 26–66) years]. The maximum standardized uptake value (SUVmax), metabolic tumor volume (MTV), and total lesion glycolysis (TLG) were obtained with the corresponding baseline values (SUV0, MTV0, and TLG0, respectively) and interim PET images (SUV1, MTV1, and TLG1, respectively). Mean apparent diffusion coefficients were obtained from baseline and interim diffusion MR images (ADC0 and ADC1, respectively). The differences between the baseline and interim parameters were measured (ΔSUV, ΔMTV, ΔTLG, and ΔADC). Subgroup analysis was performed for the HER2-negative and triple-negative groups. Datasets for convolutional neural network (CNN), assigned as training (80%) and test datasets (20%), were cropped from the baseline (PET0, MRI0) and interim (PET1, MRI1) images. Histopathologic responses were assessed using the Miller and Payne system, after three cycles of chemotherapy. Receiver operating characteristic curve analysis was used to assess the performance of the differentiating responders and non-responders. There were six responders (11%) and 50 non-responders (89%). The area under the curve (AUC) was the highest for ΔSUV at 0.805 (95% CI 0.677–0.899). The AUC was the highest for ΔSUV at 0.879 (95% CI 0.722–0.965) for the HER2-negative subtype. AUC improved following CNN application (SUV0:PET0 = 0.652:0.886, SUV1:PET1 = 0.687:0.980, and ADC1:MRI1 = 0.537:0.701), except for ADC0 (ADC0:MRI0 = 0.703:0.602). PET/MRI image deep learning model can predict pathological responses to NAC in patients with advanced breast cancer.
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