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Detection of acute dengue virus infection, with and without concurrent malaria infection, in a cohort of febrile children in Kenya, 2014-2019, by clinicians or machine learning algorithms.
Vu, David M; Krystosik, Amy R; Ndenga, Bryson A; Mutuku, Francis M; Ripp, Kelsey; Liu, Elizabeth; Bosire, Carren M; Heath, Claire; Chebii, Philip; Maina, Priscilla Watiri; Jembe, Zainab; Malumbo, Said Lipi; Amugongo, Jael Sagina; Ronga, Charles; Okuta, Victoria; Mutai, Noah; Makenzi, Nzaro G; Litunda, Kennedy A; Mukoko, Dunstan; King, Charles H; LaBeaud, A Desiree.
  • Vu DM; Department of Pediatrics, Division of Infectious Diseases, Stanford University School of Medicine, Stanford, California, United States of America.
  • Krystosik AR; Department of Pediatrics, Division of Infectious Diseases, Stanford University School of Medicine, Stanford, California, United States of America.
  • Ndenga BA; Centre for Global Health Research, Kenya Medical Research Institute, Kisumu, Kenya.
  • Mutuku FM; Department of Environment and Health Sciences, Technical University of Mombasa, Mombasa, Kenya.
  • Ripp K; University of Global Health Equity, Butaro, Rwanda.
  • Liu E; Department of Pediatrics, Division of Infectious Diseases, Stanford University School of Medicine, Stanford, California, United States of America.
  • Bosire CM; Department of Pure and Applied Sciences, Technical University of Mombasa, Mombasa, Kenya.
  • Heath C; Department of Pediatrics, Division of Infectious Diseases, Stanford University School of Medicine, Stanford, California, United States of America.
  • Chebii P; Vector-Borne Diseases Unit, Msambweni County Referral Hospital, Msambweni, Kwale, Kenya.
  • Maina PW; Vector-Borne Diseases Unit, Msambweni County Referral Hospital, Msambweni, Kwale, Kenya.
  • Jembe Z; Vector-Borne Diseases Unit, Diani Health Center, Ukunda, Kwale, Kenya.
  • Malumbo SL; Vector-Borne Diseases Unit, Msambweni County Referral Hospital, Msambweni, Kwale, Kenya.
  • Amugongo JS; Vector-Borne Diseases Unit, Msambweni County Referral Hospital, Msambweni, Kwale, Kenya.
  • Ronga C; Centre for Global Health Research, Kenya Medical Research Institute, Kisumu, Kenya.
  • Okuta V; Paediatric Department, Obama Children's Hospital, Jaramogi Oginga Odinga Referral Hospital, Kisumu, Kenya.
  • Mutai N; Centre for Global Health Research, Kenya Medical Research Institute, Kisumu, Kenya.
  • Makenzi NG; Department of Pure and Applied Sciences, Technical University of Mombasa, Mombasa, Kenya.
  • Litunda KA; Department of Pure and Applied Sciences, Technical University of Mombasa, Mombasa, Kenya.
  • Mukoko D; Vector-Borne Diseases Unit, Ministry of Health, Nairobi, Kenya.
  • King CH; Department of Pathology, Center for Global Health and Diseases, Case Western Reserve University School of Medicine, Cleveland, Ohio, United States of America.
  • LaBeaud AD; Department of Pediatrics, Division of Infectious Diseases, Stanford University School of Medicine, Stanford, California, United States of America.
PLOS Glob Public Health ; 3(7): e0001950, 2023.
Article en En | MEDLINE | ID: mdl-37494331
ABSTRACT
Poor access to diagnostic testing in resource limited settings restricts surveillance for emerging infections, such as dengue virus (DENV), to clinician suspicion, based on history and exam observations alone. We investigated the ability of machine learning to detect DENV based solely on data available at the clinic visit. We extracted symptom and physical exam data from 6,208 pediatric febrile illness visits to Kenyan public health clinics from 2014-2019 and created a dataset with 113 clinical features. Malaria testing was available at the clinic site. DENV testing was performed afterwards. We randomly sampled 70% of the dataset to develop DENV and malaria prediction models using boosted logistic regression, decision trees and random forests, support vector machines, naïve Bayes, and neural networks with 10-fold cross validation, tuned to maximize accuracy. 30% of the dataset was reserved to validate the models. 485 subjects (7.8%) had DENV, and 3,145 subjects (50.7%) had malaria. 220 (3.5%) subjects had co-infection with both DENV and malaria. In the validation dataset, clinician accuracy for diagnosis of malaria was high (82% accuracy, 85% sensitivity, 80% specificity). Accuracy of the models for predicting malaria diagnosis ranged from 53-69% (35-94% sensitivity, 11-80% specificity). In contrast, clinicians detected only 21 of 145 cases of DENV (80% accuracy, 14% sensitivity, 85% specificity). Of the six models, only logistic regression identified any DENV case (8 cases, 91% accuracy, 5.5% sensitivity, 98% specificity). Without diagnostic testing, interpretation of clinical findings by humans or machines cannot detect DENV at 8% prevalence. Access to point-of-care diagnostic tests must be prioritized to address global inequities in emerging infections surveillance.

Texto completo: 1 Banco de datos: MEDLINE Tipo de estudio: Diagnostic_studies / Prognostic_studies / Risk_factors_studies Idioma: En Año: 2023 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Tipo de estudio: Diagnostic_studies / Prognostic_studies / Risk_factors_studies Idioma: En Año: 2023 Tipo del documento: Article