Development and validation of a multivariable risk factor questionnaire to detect oesophageal cancer in 2-week wait patients

Kai Man Alexander Ho(Wellcome / EPSRC Centre for Interventional and Surgical Sciences), Avi Rosenfeld(Jerusalem College of Technology), Áine Hogan(University College London), Hazel McBain(University College London), Margaret Duku(University College London), Paul BD Wolfson(Wellcome / EPSRC Centre for Interventional and Surgical Sciences), Ashley Wilson(University College London), Sharon Cheung(Wellcome / EPSRC Centre for Interventional and Surgical Sciences), Laura Hennelly(University College London), Lester Macabodbod(University College London), David Graham(University College London Hospitals NHS Foundation Trust), Vinay Sehgal(University College London Hospitals NHS Foundation Trust), Amitava Banerjee(St Bartholomew's Hospital), Laurence Lovat(University College Hospital), Olivia Adu-Anti(London North West Healthcare NHS Trust), Kalliopi Alexandropoulou(Royal Surrey County Hospital), Ameena Ayub(London North West Healthcare NHS Trust), Nicky Barnes(Wexham Park Hospital), Peter J. Basford(St Richard's Hospital), Ellen Brown(County Durham and Darlington NHS Foundation Trust), Jeffrey Butterworth, Heather Button, Ellie Clarke, Alexandra Cope, Jessica Cordle, Joana Da Rocha, John de Caestecker, Anjan Dhar, Jason Dunn, Martin Ebon, Stacey Forsey, Tracy Foster, Edith Gallagher, Helen Graham(University College London Hospitals NHS Foundation Trust), Fiona Gregg, Philip D. Hall, Sandra L. Jackson, Nicole Kader, Sudarshan Kadri, Sandhya Kalsi, Richard Keld, Chun Man Lee, Hui Yann Lee, Andy CY Li(Royal Surrey County Hospital), Gideon Lipman, Inder Mainie, Julie Matthews, Cheryl Mendonca, Danielle Morris, Vinod Patel, P.J.K. Paterson, Rosemary Phillips, Elizabeth Ratcliffe, Cait Rees, Joana Da Rocha, Radu Rusu, Heather Savill, Sharan Shetty, Leena Sinha, Bob Soin, Mamoon Solkar, Darmarajah Veeramootoo, Joanne Vere, Olivia Watchorn(London North West Healthcare NHS Trust), Hendrik Wegstapel, Tracey White, Robert P. Willert, Susannah Woodrow, Sebastian Zeki
Clinics and Research in Hepatology and Gastroenterology
January 18, 2023
Cited by 4Open Access
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Abstract

INTRODUCTION: Oesophageal cancer is associated with poor health outcomes. Upper GI (UGI) endoscopy is the gold standard for diagnosis but is associated with patient discomfort and low yield for cancer. We used a machine learning approach to create a model which predicted oesophageal cancer based on questionnaire responses. METHODS: We used data from 2 separate prospective cross-sectional studies: the Saliva to Predict rIsk of disease using Transcriptomics and epigenetics (SPIT) study and predicting RIsk of diSease using detailed Questionnaires (RISQ) study. We recruited patients from National Health Service (NHS) suspected cancer pathways as well as patients with known cancer. We identified patient characteristics and questionnaire responses which were most associated with the development of oesophageal cancer. Using the SPIT dataset, we trained seven different machine learning models, selecting the best area under the receiver operator curve (AUC) to create our final model. We further applied a cost function to maximise cancer detection. We then independently validated the model using the RISQ dataset. RESULTS: 807 patients were included in model training and testing, split in a 70:30 ratio. 294 patients were included in model validation. The best model during training was regularised logistic regression using 17 features (median AUC: 0.81, interquartile range (IQR): 0.69-0.85). For testing and validation datasets, the model achieved an AUC of 0.71 (95% CI: 0.61-0.81) and 0.92 (95% CI: 0.88-0.96) respectively. At a set cut off, our model achieved a sensitivity of 97.6% and specificity of 59.1%. We additionally piloted the model in 12 patients with gastric cancer; 9/12 (75%) of patients were correctly classified. CONCLUSIONS: We have developed and validated a risk stratification tool using a questionnaire approach. This could aid prioritising patients at high risk of having oesophageal cancer for endoscopy. Our tool could help address endoscopic backlogs caused by the COVID-19 pandemic.


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