Machine learning to predict early recurrence after oesophageal cancer surgery
Author:
Rahman S A1ORCID, Walker R C1, Lloyd M A1, Grace B L1, van Boxel G I2, Kingma B F2, Ruurda J P2, van Hillegersberg R2, Harris S3, Parsons S4, Mercer S5, Griffiths E A6, O'Neill J R7, Turkington R8, Fitzgerald R C9, Underwood T J1, Noorani Ayesha, Elliott Rachael Fels, Edwards Paul A W, Grehan Nicola, Nutzinger Barbara, Crawte Jason, Chettouh Hamza, Contino Gianmarco, Li Xiaodun, Gregson Eleanor, Zeki Sebastian, de la Rue Rachel, Malhotra Shalini, Tavaré Simon, Lynch Andy G, Smith Mike L, Davies Jim, Crichton Charles, Carroll Nick, Safranek Peter, Hindmarsh Andrew, Sujendran Vijayendran, Hayes Stephen J, Ang Yeng, Preston Shaun R, Oakes Sarah, Bagwan Izhar, Save Vicki, Skipworth Richard J E, Hupp Ted R, O'Neill J Robert, Tucker Olga, Beggs Andrew, Taniere Philippe, Puig Sonia, Underwood Timothy J, Noble Fergus, Byrne James P, Kelly Jamie J, Owsley Jack, Barr Hugh, Shepherd Neil, Old Oliver, Lagergren Jesper, Gossage James, Chang Andrew Davies Fuju, Zylstra Janine, Goh Vicky, Ciccarelli Francesca D, Sanders Grant, Berrisford Richard, Harden Catherine, Bunting David, Lewis Mike, Cheong Ed, Kumar Bhaskar, Parsons Simon L, Soomro Irshad, Kaye Philip, Saunders John, Lovat Laurence, Haidry Rehan, Eneh Victor, Igali Laszlo, Scott Michael, Sothi Shamila, Suortamo Sari, Lishman Suzy, Hanna George B, Peters Christopher J, Grabowska Anna
Affiliation:
1. Cancer Sciences Unit, University of Southampton, Southampton, UK 2. Department of Surgery, University Medical Centre, Utrecht, the Netherlands 3. Department of Public Health Sciences and Medical Statistics, University of Southampton, Southampton, UK 4. Department of Surgery, Nottingham University Hospitals NHS Trust, Nottingham, UK 5. Department of Surgery, Portsmouth Hospitals NHS Trust, Portsmouth, UK 6. Department of Upper Gastrointestinal Surgery, University Hospitals Birmingham NHS Foundation Trust, Birmingham, UK 7. Cambridge Oesophagogastric Centre, Addenbrookes Hospital, Cambridge University Hospitals Foundation Trust, Cambridge, UK 8. Centre for Cancer Research and Cell Biology, Queen's University Belfast, Belfast, UK 9. Hutchison/Medical Research Council Cancer Unit, University of Cambridge, Cambridge, UK
Abstract
Abstract
Background
Early cancer recurrence after oesophagectomy is a common problem, with an incidence of 20–30 per cent despite the widespread use of neoadjuvant treatment. Quantification of this risk is difficult and existing models perform poorly. This study aimed to develop a predictive model for early recurrence after surgery for oesophageal adenocarcinoma using a large multinational cohort and machine learning approaches.
Methods
Consecutive patients who underwent oesophagectomy for adenocarcinoma and had neoadjuvant treatment in one Dutch and six UK oesophagogastric units were analysed. Using clinical characteristics and postoperative histopathology, models were generated using elastic net regression (ELR) and the machine learning methods random forest (RF) and extreme gradient boosting (XGB). Finally, a combined (ensemble) model of these was generated. The relative importance of factors to outcome was calculated as a percentage contribution to the model.
Results
A total of 812 patients were included. The recurrence rate at less than 1 year was 29·1 per cent. All of the models demonstrated good discrimination. Internally validated areas under the receiver operating characteristic (ROC) curve (AUCs) were similar, with the ensemble model performing best (AUC 0·791 for ELR, 0·801 for RF, 0·804 for XGB, 0·805 for ensemble). Performance was similar when internal–external validation was used (validation across sites, AUC 0·804 for ensemble). In the final model, the most important variables were number of positive lymph nodes (25·7 per cent) and lymphovascular invasion (16·9 per cent).
Conclusion
The model derived using machine learning approaches and an international data set provided excellent performance in quantifying the risk of early recurrence after surgery, and will be useful in prognostication for clinicians and patients.
Funder
Programme Grant from Cancer Research UK Cancer Research UK and Royal College of Surgeons of England Advanced Clinician Scientist Fellowship
Publisher
Oxford University Press (OUP)
Cited by
39 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|