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Development and validation of a risk prediction model to diagnose Barrett's oesophagus (MARK-BE): a case-control machine learning approach

Authors :
Sharon Cave
Vinay Sehgal
Samuel J Lovat
Lyndsey Fieldson
Eliyahu M Heifetz
Beverley Longhurst
Jan Bornschein
Debasis Majumdar
Matthew R. Banks
Kathryn Brown
Jayne Butcher
Morgan Moorghen
Omer F. Ahmad
Grace Adesina
Myrna Udarbe
Suzanne Henry
Sarah Jevons
M Al-Izzi
Joan Idris
Rommel Butawan
Elizabeth L. Bird-Lieberman
Julie Ingmire
Steve Bown
Beverley Haynes
Ash Wilson
Peter Sasieni
Nick Hayes
Gayle Clifford
Jacquelyn Harvey
Marco Novelli
Tara Nuckcheddy Grant
Marc Hopton
Kassem Manuf
Carly Brown
Sabrina Holohan
Samantha Warburton
Roisin Schimmel
Uria Noiman
John Louis-Auguste
Manuel Rodriguez–Justo
Mina Patel
Avi Rosenfeld
Roisin Bevan
Leanne Mills
Gideon Lipman
Shajahan Wahed
David Graham
Elizabeth Green
Yean Lim
Jonathan R. White
Mordehy Ben-Zecharia
Rami Sweis
Glynis Rose
Wanfeng Zhao
Sarmed S. Sami
Reshma Kanani
Laurence Lovat
Claire Shaw
Sarah Kerr
Nigel Butter
Karen Coker
Alison Winstanley
Haroon Miah
Jacobo Fernandez-Sordo Ortiz
Caroline Wilson
Roberto Cayado Lopez
Rebecca C. Fitzgerald
Bincy Alias
Massimiliano di Pietro
Anne Eastick
Darina Kohoutova
Ian Sargeant
Adil Butt
Rupam Bhattacharyya
Abdullah Mawas
Lisa Gadeke
Nelson Kath Houghton
Kareem M. Shariff
Mariann Baulf
Richmond Abeseabe
Peter Basford
Helen Bailey
Scott Elliot
Philippa Laverick
Eleanor Dewhurst
Victor Eneh
Anita Gibbons
Rehan Haidry
Daryl Hagan
Jose Ariza
Source :
The Lancet: Digital Health, Vol 2, Iss 1, Pp e37-e48 (2020)
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

Summary Background Screening for Barrett's oesophagus relies on endoscopy, which is invasive and few who undergo the procedure are found to have the condition. We aimed to use machine learning techniques to develop and externally validate a simple risk prediction panel to screen individuals for Barrett's oesophagus. Methods In this prospective study, machine learning risk prediction in Barrett's oesophagus (MARK-BE), we used data from two case-control studies, BEST2 and BOOST, to compile training and validation datasets. From the BEST2 study, we analysed questionnaires from 1299 patients, of whom 880 (67·7%) had Barrett's oesophagus, including 40 with invasive oesophageal adenocarcinoma, and 419 (32·3%) were controls. We randomly split (6:4) the cohort using a computer algorithm into a training dataset of 776 patients and a testing dataset of 523 patients. We compiled an external validation cohort from the BOOST study, which included 398 patients, comprising 198 patients with Barrett's oesophagus (23 with oesophageal adenocarcinoma) and 200 controls. We identified independently important diagnostic features of Barrett's oesophagus using the machine learning techniques information gain and correlation-based feature selection. We assessed multiple classification tools to create a multivariable risk prediction model. Internal validation of the model using the BEST2 testing dataset was followed by external validation using the BOOST external validation dataset. From these data we created a prediction panel to identify at-risk individuals. Findings The BEST2 study included 40 diagnostic features. Of these, 19 added information gain but after correlation-based feature selection only eight showed independent diagnostic value including age, sex, cigarette smoking, waist circumference, frequency of stomach pain, duration of heartburn and acidic taste, and taking antireflux medication, of which all were associated with increased risk of Barrett's oesophagus, except frequency of stomach pain, with was inversely associated in a case-control population. Logistic regression offered the highest prediction quality with an area under the receiver-operator curve (AUC) of 0·87 (95% CI 0·84–0·90; sensitivity set at 90%; specificity of 68%). In the testing dataset, AUC was 0·86 (0·83–0·89; sensitivity set at 90%; specificity of 65%). In the external validation dataset, the AUC was 0·81 (0·74–0·84; sensitivity set at 90%; specificity of 58%). Interpretation Our diagnostic model offers valid predictions of diagnosis of Barrett's oesophagus in patients with symptomatic gastro-oesophageal reflux disease, assisting in identifying who should go forward to invasive confirmatory testing. Our predictive panel suggests that overweight men who have been taking antireflux medication for a long time might merit particular consideration for further testing. Our risk prediction panel is quick and simple to administer but will need further calibration and validation in a prospective study in primary care. Funding Charles Wolfson Charitable Trust and Guts UK.

Details

ISSN :
25897500
Volume :
2
Database :
OpenAIRE
Journal :
The Lancet Digital Health
Accession number :
edsair.doi.dedup.....401663ab0c67d40c05c28e01f65d70e1