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Comparing machine learning with case-control models to identify confirmed dengue cases.
Ho, Tzong-Shiann; Weng, Ting-Chia; Wang, Jung-Der; Han, Hsieh-Cheng; Cheng, Hao-Chien; Yang, Chun-Chieh; Yu, Chih-Hen; Liu, Yen-Jung; Hu, Chien Hsiang; Huang, Chun-Yu; Chen, Ming-Hong; King, Chwan-Chuen; Oyang, Yen-Jen; Liu, Ching-Chuan.
Affiliation
  • Ho TS; Department of Pediatrics, National Cheng Kung University Hospital, College of Medicine, National Cheng Kung University, Tainan, Taiwan, Republic of China.
  • Weng TC; Center of Infectious Disease and Signaling Research, National Cheng Kung University, Tainan, Taiwan, Republic of China.
  • Wang JD; Department of Occupational and Environmental Medicine, National Cheng Kung University Hospital, Tainan, Taiwan, Republic of China.
  • Han HC; Department of Family Medicine, National Cheng Kung University Hospital, Tainan, Taiwan, Republic of China.
  • Cheng HC; Department of Occupational and Environmental Medicine, National Cheng Kung University Hospital, Tainan, Taiwan, Republic of China.
  • Yang CC; Department of Internal Medicine, National Cheng Kung University Hospital, College of Medicine, National Cheng Kung University, Tainan, Taiwan, Republic of China.
  • Yu CH; Department of Public Heath, College of Medicine, National Cheng Kung University, Tainan, Taiwan, Republic of China.
  • Liu YJ; Research Center for Applied Sciences, Academia Sinica, Taipei, Taiwan, Republic of China.
  • Hu CH; Institute of Biomedical Electronics and Bioinformatics, College of Electrical Engineering & Computer Science, National Taiwan University, Taipei, Taiwan, Republic of China.
  • Huang CY; Institute of Biomedical Electronics and Bioinformatics, College of Electrical Engineering & Computer Science, National Taiwan University, Taipei, Taiwan, Republic of China.
  • Chen MH; Department of Internal Medicine, National Cheng Kung University Hospital, College of Medicine, National Cheng Kung University, Tainan, Taiwan, Republic of China.
  • King CC; Institute of Biomedical Electronics and Bioinformatics, College of Electrical Engineering & Computer Science, National Taiwan University, Taipei, Taiwan, Republic of China.
  • Oyang YJ; Department of Medical Informatics, National Cheng Kung University Hospital, College of Medicine, National Cheng Kung University, Tainan, Taiwan, Republic of China.
  • Liu CC; Institute of Biomedical Electronics and Bioinformatics, College of Electrical Engineering & Computer Science, National Taiwan University, Taipei, Taiwan, Republic of China.
PLoS Negl Trop Dis ; 14(11): e0008843, 2020 11.
Article in En | MEDLINE | ID: mdl-33170848
ABSTRACT
In recent decades, the global incidence of dengue has increased. Affected countries have responded with more effective surveillance strategies to detect outbreaks early, monitor the trends, and implement prevention and control measures. We have applied newly developed machine learning approaches to identify laboratory-confirmed dengue cases from 4,894 emergency department patients with dengue-like illness (DLI) who received laboratory tests. Among them, 60.11% (2942 cases) were confirmed to have dengue. Using just four input variables [age, body temperature, white blood cells counts (WBCs) and platelets], not only the state-of-the-art deep neural network (DNN) prediction models but also the conventional decision tree (DT) and logistic regression (LR) models delivered performances with receiver operating characteristic (ROC) curves areas under curves (AUCs) of the ranging from 83.75% to 85.87% [for DT, DNN and LR 84.60% ± 0.03%, 85.87% ± 0.54%, 83.75% ± 0.17%, respectively]. Subgroup analyses found all the models were very sensitive particularly in the pre-epidemic period. Pre-peak sensitivities (<35 weeks) were 92.6%, 92.9%, and 93.1% in DT, DNN, and LR respectively. Adjusted odds ratios examined with LR for low WBCs [≤ 3.2 (x103/µL)], fever (≥38°C), low platelet counts [< 100 (x103/µL)], and elderly (≥ 65 years) were 5.17 [95% confidence interval (CI) 3.96-6.76], 3.17 [95%CI 2.74-3.66], 3.10 [95%CI 2.44-3.94], and 1.77 [95%CI 1.50-2.10], respectively. Our prediction models can readily be used in resource-poor countries where viral/serologic tests are inconvenient and can also be applied for real-time syndromic surveillance to monitor trends of dengue cases and even be integrated with mosquito/environment surveillance for early warning and immediate prevention/control measures. In other words, a local community hospital/clinic with an instrument of complete blood counts (including platelets) can provide a sentinel screening during outbreaks. In conclusion, the machine learning approach can facilitate medical and public health efforts to minimize the health threat of dengue epidemics. However, laboratory confirmation remains the primary goal of surveillance and outbreak investigation.
Subject(s)

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Dengue / Epidemiological Monitoring / Machine Learning Type of study: Observational_studies / Prognostic_studies / Risk_factors_studies / Screening_studies Limits: Adolescent / Adult / Aged / Female / Humans / Male / Middle aged Language: En Journal: PLoS Negl Trop Dis Journal subject: MEDICINA TROPICAL Year: 2020 Document type: Article Affiliation country: China Publication country: EEUU / ESTADOS UNIDOS / ESTADOS UNIDOS DA AMERICA / EUA / UNITED STATES / UNITED STATES OF AMERICA / US / USA

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Dengue / Epidemiological Monitoring / Machine Learning Type of study: Observational_studies / Prognostic_studies / Risk_factors_studies / Screening_studies Limits: Adolescent / Adult / Aged / Female / Humans / Male / Middle aged Language: En Journal: PLoS Negl Trop Dis Journal subject: MEDICINA TROPICAL Year: 2020 Document type: Article Affiliation country: China Publication country: EEUU / ESTADOS UNIDOS / ESTADOS UNIDOS DA AMERICA / EUA / UNITED STATES / UNITED STATES OF AMERICA / US / USA