A Deep Learning Framework with Explainability for the Prediction of Lateral Locoregional Recurrences in Rectal Cancer Patients with Suspicious Lateral Lymph Nodes
Tania C. Sluckin,
Marije Hekhuis,
Sabrine Q. Kol,
Joost Nederend,
Karin Horsthuis,
Regina G. H. Beets-Tan,
Geerard L. Beets,
Jacobus W. A. Burger,
Jurriaan B. Tuynman,
Harm J. T. Rutten,
Miranda Kusters,
Sean Benson
Affiliations
Tania C. Sluckin
Department of Surgery, Amsterdam UMC Location Vrije Universiteit Amsterdam, 1081 HV Amsterdam, The Netherlands
Marije Hekhuis
Department of Surgery, Amsterdam UMC Location Vrije Universiteit Amsterdam, 1081 HV Amsterdam, The Netherlands
Sabrine Q. Kol
Department of Radiology, Amsterdam UMC Location Vrije Universiteit Amsterdam, 1081 HV Amsterdam, The Netherlands
Joost Nederend
Department of Radiology, Catharina Hospital, 5623 EJ Eindhoven, The Netherlands
Karin Horsthuis
Cancer Center Amsterdam, Imaging and Biomarkers, 1081 HV Amsterdam, The Netherlands
Regina G. H. Beets-Tan
GROW School for Oncology & Developmental Biology, Maastricht University, 6211 LK Maastricht, The Netherlands
Geerard L. Beets
GROW School for Oncology & Developmental Biology, Maastricht University, 6211 LK Maastricht, The Netherlands
Jacobus W. A. Burger
Department of Surgery, Catharina Hospital, 5623 EJ Eindhoven, The Netherlands
Jurriaan B. Tuynman
Department of Surgery, Amsterdam UMC Location Vrije Universiteit Amsterdam, 1081 HV Amsterdam, The Netherlands
Harm J. T. Rutten
Department of Surgery, Catharina Hospital, 5623 EJ Eindhoven, The Netherlands
Miranda Kusters
Department of Surgery, Amsterdam UMC Location Vrije Universiteit Amsterdam, 1081 HV Amsterdam, The Netherlands
Sean Benson
Department of Radiology, Netherlands Cancer Institute, 1066 CX Amsterdam, The Netherlands
Malignant lateral lymph nodes (LLNs) in low, locally advanced rectal cancer can cause (ipsi-lateral) local recurrences ((L)LR). Accurate identification is, therefore, essential. This study explored LLN features to create an artificial intelligence prediction model, estimating the risk of (L)LR. This retrospective multicentre cohort study examined 196 patients diagnosed with rectal cancer between 2008 and 2020 from three tertiary centres in the Netherlands. Primary and restaging T2W magnetic resonance imaging and clinical features were used. Visible LLNs were segmented and used for a multi-channel convolutional neural network. A deep learning model was developed and trained for the prediction of (L)LR according to malignant LLNs. Combined imaging and clinical features resulted in AUCs of 0.78 and 0.80 for LR and LLR, respectively. The sensitivity and specificity were 85.7% and 67.6%, respectively. Class activation map explainability methods were applied and consistently identified the same high-risk regions with structural similarity indices ranging from 0.772–0.930. This model resulted in good predictive value for (L)LR rates and can form the basis of future auto-segmentation programs to assist in the identification of high-risk patients and the development of risk stratification models.