Your browser doesn't support javascript.
loading
Application of machine-learning model to optimize colonic adenoma detection in India.
Jagtap, Nitin; Kalapala, Rakesh; Rughwani, Hardik; Singh, Aniruddha Pratap; Inavolu, Pradev; Ramchandani, Mohan; Lakhtakia, Sundeep; Manohar Reddy, P; Sekaran, Anuradha; Tandan, Manu; Nabi, Zaheer; Basha, Jahangeer; Gupta, Rajesh; Memon, Sana Fathima; Venkat Rao, G; Sharma, Prateek; Nageshwar Reddy, D.
Affiliation
  • Jagtap N; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India. docnits13@gmail.com.
  • Kalapala R; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Rughwani H; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Singh AP; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Inavolu P; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Ramchandani M; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Lakhtakia S; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Manohar Reddy P; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Sekaran A; Department of Pathology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Tandan M; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Nabi Z; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Basha J; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Gupta R; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Memon SF; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
  • Venkat Rao G; Department of Surgical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad 500 082, India.
  • Sharma P; The University of Kansas Medical Center, Kansas City, KS, USA.
  • Nageshwar Reddy D; Department of Medical Gastroenterology, Asian Institute of Gastroenterology, Hyderabad, 500 082, India.
Article de En | MEDLINE | ID: mdl-38758433
ABSTRACT

AIMS:

There is limited data on the prevalence and risk factors of colonic adenoma from the Indian sub-continent. We aimed at developing a machine-learning model to optimize colonic adenoma detection in a prospective cohort.

METHODS:

All consecutive adult patients undergoing diagnostic colonoscopy were enrolled between October 2020 and November 2022. Patients with a high risk of colonic adenoma were excluded. The predictive model was developed using the gradient-boosting machine (GBM)-learning method. The GBM model was optimized further by adjusting the learning rate and the number of trees and 10-fold cross-validation.

RESULTS:

Total 10,320 patients (mean age 45.18 ± 14.82 years; 69% men) were included in the study. In the overall population, 1152 (11.2%) patients had at least one adenoma. In patients with age > 50 years, hospital-based adenoma prevalence was 19.5% (808/4144). The area under the receiver operating curve (AUC) (SD) of the logistic regression model was 72.55% (4.91), while the AUCs for deep learning, decision tree, random forest and gradient-boosted tree model were 76.25% (4.22%), 65.95% (4.01%), 79.38% (4.91%) and 84.76% (2.86%), respectively. After model optimization and cross-validation, the AUC of the gradient-boosted tree model has increased to 92.2% (1.1%).

CONCLUSIONS:

Machine-learning models may predict colorectal adenoma more accurately than logistic regression. A machine-learning model may help optimize the use of colonoscopy to prevent colorectal cancers. TRIAL REGISTRATION ClinicalTrials.gov (ID NCT04512729).
Mots clés

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Langue: En Journal: Indian J Gastroenterol Sujet du journal: GASTROENTEROLOGIA Année: 2024 Type de document: Article Pays d'affiliation: Inde

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Langue: En Journal: Indian J Gastroenterol Sujet du journal: GASTROENTEROLOGIA Année: 2024 Type de document: Article Pays d'affiliation: Inde