4.6 Article

Can Clinical Symptoms and Laboratory Results Predict CT Abnormality? Initial Findings Using Novel Machine Learning Techniques in Children With COVID-19 Infections

Journal

FRONTIERS IN MEDICINE
Volume 8, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fmed.2021.699984

Keywords

COVID-19; decision trees; machine learning; RT-PCR-polymerase chain reaction with reverse transcription; artificial intelligence; pediatric

Funding

  1. Natural Science Foundation of Guangdong Province [2020A1515010918]
  2. Project of Shenzhen International Cooperation Foundation [GJHZ20180926165402083]
  3. Project of Shenzhen Basic Development Project [JCYJ 20190806164409040]
  4. Hangzhou Economic and Technological Development Area Strategical Grant [Imperial Institute of Advanced Technology]
  5. European Research Council Innovative Medicines Initiative on Development of Therapeutics and Diagnostics Combatting Coronavirus Infections Award DRAGON: rapiD and secuRe AI imaging based diaGnosis, stratification, follow-up, and preparedness for coronaviru [H2020-JTI-IMI2 101005122]
  6. AI for Health Imaging Award CHAIMELEON: Accelerating the Lab to Market Transition of AI Tools for Cancer Management [H2020-SC1-FA-DTS-2019-1 952172]

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This study investigated whether clinical symptoms and laboratory results can predict chest CT outcomes for pediatric patients with positive RT-PCR testing results, finding age, lymphocyte, neutrophils, ferritin, and C-reactive protein as the most related indicators. The study suggests that the necessity of CT for pediatric patients should be reconsidered, based on the predictive ability of clinical indicators.
The rapid spread of coronavirus 2019 disease (COVID-19) has manifested a global public health crisis, and chest CT has been proven to be a powerful tool for screening, triage, evaluation and prognosis in COVID-19 patients. However, CT is not only costly but also associated with an increased incidence of cancer, in particular for children. This study will question whether clinical symptoms and laboratory results can predict the CT outcomes for the pediatric patients with positive RT-PCR testing results in order to determine the necessity of CT for such a vulnerable group. Clinical data were collected from 244 consecutive pediatric patients (16 years of age and under) treated at Wuhan Children's Hospital with positive RT-PCR testing, and the chest CT were performed within 3 days of clinical data collection, from January 21 to March 8, 2020. This study was approved by the local ethics committee of Wuhan Children's Hospital. Advanced decision tree based machine learning models were developed for the prediction of CT outcomes. Results have shown that age, lymphocyte, neutrophils, ferritin and C-reactive protein are the most related clinical indicators for predicting CT outcomes for pediatric patients with positive RT-PCR testing. Our decision support system has managed to achieve an AUC of 0.84 with 0.82 accuracy and 0.84 sensitivity for predicting CT outcomes. Our model can effectively predict CT outcomes, and our findings have indicated that the use of CT should be reconsidered for pediatric patients, as it may not be indispensable.

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