Your browser doesn't support javascript.
Machine learning models to predict the maximum severity of COVID-19 based on initial hospitalization record.
Hwangbo, Suhyun; Kim, Yoonjung; Lee, Chanhee; Lee, Seungyeoun; Oh, Bumjo; Moon, Min Kyong; Kim, Shin-Woo; Park, Taesung.
  • Hwangbo S; Interdisciplinary Program in Bioinformatics, Seoul National University, Seoul, South Korea.
  • Kim Y; Department of Genomic Medicine, Seoul National University Hospital, Seoul, South Korea.
  • Lee C; Department of Internal Medicine, School of Medicine, Kyungpook National University, Daegu, South Korea.
  • Lee S; Interdisciplinary Program in Bioinformatics, Seoul National University, Seoul, South Korea.
  • Oh B; Department of Mathematics and Statistics, Sejong University, Seoul, South Korea.
  • Moon MK; Department of Family Medicine, Seoul Metropolitan Government Seoul National University Boramae Medical Center, Seoul, South Korea.
  • Kim SW; Department of Internal Medicine, Seoul Metropolitan Government Seoul National University Boramae Medical Center, Seoul, South Korea.
  • Park T; Department of Internal Medicine, Seoul National University College of Medicine, Seoul, South Korea.
Front Public Health ; 10: 1007205, 2022.
Статья в английский | MEDLINE | ID: covidwho-2163181
ABSTRACT

Background:

As the worldwide spread of coronavirus disease 2019 (COVID-19) continues for a long time, early prediction of the maximum severity is required for effective treatment of each patient.

Objective:

This study aimed to develop predictive models for the maximum severity of hospitalized COVID-19 patients using artificial intelligence (AI)/machine learning (ML) algorithms.

Methods:

The medical records of 2,263 COVID-19 patients admitted to 10 hospitals in Daegu, Korea, from February 18, 2020, to May 19, 2020, were comprehensively reviewed. The maximum severity during hospitalization was divided into four groups according to the severity level mild, moderate, severe, and critical. The patient's initial hospitalization records were used as predictors. The total dataset was randomly split into a training set and a testing set in a 21 ratio, taking into account the four maximum severity groups. Predictive models were developed using the training set and were evaluated using the testing set. Two approaches were performed using four groups based on original severity levels groups (i.e., 4-group classification) and using two groups after regrouping the four severity level into two (i.e., binary classification). Three variable selection methods including randomForestSRC were performed. As AI/ML algorithms for 4-group classification, GUIDE and proportional odds model were used. For binary classification, we used five AI/ML algorithms, including deep neural network and GUIDE.

Results:

Of the four maximum severity groups, the moderate group had the highest percentage (1,115 patients; 49.5%). As factors contributing to exacerbation of maximum severity, there were 25 statistically significant predictors through simple analysis of linear trends. As a result of model development, the following three models based on binary classification showed high predictive performance (1) Mild vs. Above Moderate, (2) Below Moderate vs. Above Severe, and (3) Below Severe vs. Critical. The performance of these three binary models was evaluated using AUC values 0.883, 0.879, and, 0.887, respectively. Based on results for each of the three predictive models, we developed web-based nomograms for clinical use (http//statgen.snu.ac.kr/software/nomogramDaeguCovid/).

Conclusions:

We successfully developed web-based nomograms predicting the maximum severity. These nomograms are expected to help plan an effective treatment for each patient in the clinical field.
Тема - темы
ключевые слова

Полный текст: Имеется в наличии Коллекция: Международные базы данных база данных: MEDLINE Основная тема: COVID-19 Тип исследования: Экспериментальные исследования / Наблюдательное исследование / Прогностическое исследование / Рандомизированные контролируемые испытания Пределы темы: Люди Язык: английский Журнал: Front Public Health Год: 2022 Тип: Статья Аффилированная страна: Fpubh.2022.1007205

Документы, близкие по теме

MEDLINE

...
LILACS

LIS


Полный текст: Имеется в наличии Коллекция: Международные базы данных база данных: MEDLINE Основная тема: COVID-19 Тип исследования: Экспериментальные исследования / Наблюдательное исследование / Прогностическое исследование / Рандомизированные контролируемые испытания Пределы темы: Люди Язык: английский Журнал: Front Public Health Год: 2022 Тип: Статья Аффилированная страна: Fpubh.2022.1007205