Machine learning to predict early recurrence after oesophageal cancer surgery. Issue 8 (30th January 2020)
- Record Type:
- Journal Article
- Title:
- Machine learning to predict early recurrence after oesophageal cancer surgery. Issue 8 (30th January 2020)
- Main Title:
- Machine learning to predict early recurrence after oesophageal cancer surgery
- Authors:
- Rahman, S A
Walker, R C
Lloyd, M A
Grace, B L
van Boxel, G I
Kingma, B F
Ruurda, J P
van Hillegersberg, R
Harris, S
Parsons, S
Mercer, S
Griffiths, E A
O'Neill, J R
Turkington, R
Fitzgerald, R C
Underwood, T J
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
… (more) - 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, theAbstract: 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. Graphical Abstract: Early recurrence after surgery for adenocarcinoma of the oesophagus is common. A risk prediction model was derived using modern machine learning methods that accurately predicts risk of early recurrence using postoperative pathology. Machine learning may help … (more)
- Is Part Of:
- British journal of surgery. Volume 107:Issue 8(2020)
- Journal:
- British journal of surgery
- Issue:
- Volume 107:Issue 8(2020)
- Issue Display:
- Volume 107, Issue 8 (2020)
- Year:
- 2020
- Volume:
- 107
- Issue:
- 8
- Issue Sort Value:
- 2020-0107-0008-0000
- Page Start:
- 1042
- Page End:
- 1052
- Publication Date:
- 2020-01-30
- Subjects:
- Surgery -- Periodicals
617.005 - Journal URLs:
- http://www.bjs.co.uk/bjsCda/cda/microHome.do ↗
https://academic.oup.com/bjs# ↗
http://onlinelibrary.wiley.com/ ↗ - DOI:
- 10.1002/bjs.11461 ↗
- Languages:
- English
- ISSNs:
- 0007-1323
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 2325.000000
British Library DSC - BLDSS-3PM
British Library STI - ELD Digital store - Ingest File:
- 16235.xml