Predicting tumor recurrence on baseline MR imaging in patients with early-stage hepatocellular carcinoma using deep machine learning

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作者
Ahmet Said Kucukkaya
Tal Zeevi
Nathan Xianming Chai
Rajiv Raju
Stefan Philipp Haider
Mohamed Elbanan
Alexandra Petukhova-Greenstein
MingDe Lin
John Onofrey
Michal Nowak
Kirsten Cooper
Elizabeth Thomas
Jessica Santana
Bernhard Gebauer
David Mulligan
Lawrence Staib
Ramesh Batra
Julius Chapiro
机构
[1] Yale University School of Medicine,Department of Radiology and Biomedical Imaging
[2] Charité-Universitätsmedizin Berlin,Institute of Radiology
[3] Corporate Member of Freie Universität Berlin,Department of Diagnostic Radiology, Bridgeport Hospital
[4] Humboldt-Universität,Transplantation and Immunology, Department of Surgery
[5] and Berlin Institute of Health,undefined
[6] Yale New Haven Health System,undefined
[7] Visage Imaging,undefined
[8] Inc.,undefined
[9] Yale University School of Medicine,undefined
来源
Scientific Reports | / 13卷
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摘要
Tumor recurrence affects up to 70% of early-stage hepatocellular carcinoma (HCC) patients, depending on treatment option. Deep learning algorithms allow in-depth exploration of imaging data to discover imaging features that may be predictive of recurrence. This study explored the use of convolutional neural networks (CNN) to predict HCC recurrence in patients with early-stage HCC from pre-treatment magnetic resonance (MR) images. This retrospective study included 120 patients with early-stage HCC. Pre-treatment MR images were fed into a machine learning pipeline (VGG16 and XGBoost) to predict recurrence within six different time frames (range 1–6 years). Model performance was evaluated with the area under the receiver operating characteristic curves (AUC–ROC). After prediction, the model’s clinical relevance was evaluated using Kaplan–Meier analysis with recurrence-free survival (RFS) as the endpoint. Of 120 patients, 44 had disease recurrence after therapy. Six different models performed with AUC values between 0.71 to 0.85. In Kaplan–Meier analysis, five of six models obtained statistical significance when predicting RFS (log-rank p < 0.05). Our proof-of-concept study indicates that deep learning algorithms can be utilized to predict early-stage HCC recurrence. Successful identification of high-risk recurrence candidates may help optimize follow-up imaging and improve long-term outcomes post-treatment.
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