Literature DB >> 33647071

Personalized prediction of early childhood asthma persistence: A machine learning approach.

Saurav Bose1, Chén C Kenyon2,3, Aaron J Masino1,4.   

Abstract

Early childhood asthma diagnosis is common; however, many children diagnosed before age 5 experience symptom resolution and it remains difficult to identify individuals whose symptoms will persist. Our objective was to develop machine learning models to identify which individuals diagnosed with asthma before age 5 continue to experience asthma-related visits. We curated a retrospective dataset for 9,934 children derived from electronic health record (EHR) data. We trained five machine learning models to differentiate individuals without subsequent asthma-related visits (transient diagnosis) from those with asthma-related visits between ages 5 and 10 (persistent diagnosis) given clinical information up to age 5 years. Based on average NPV-Specificity area (ANSA), all models performed significantly better than random chance, with XGBoost obtaining the best performance (0.43 mean ANSA). Feature importance analysis indicated age of last asthma diagnosis under 5 years, total number of asthma related visits, self-identified black race, allergic rhinitis, and eczema as important features. Although our models appear to perform well, a lack of prior models utilizing a large number of features to predict individual persistence makes direct comparison infeasible. However, feature importance analysis indicates our models are consistent with prior research indicating diagnosis age and prior health service utilization as important predictors of persistent asthma. We therefore find that machine learning models can predict which individuals will experience persistent asthma with good performance and may be useful to guide clinician and parental decisions regarding asthma counselling in early childhood.

Entities:  

Year:  2021        PMID: 33647071      PMCID: PMC7920380          DOI: 10.1371/journal.pone.0247784

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  18 in total

1.  Computer-based models to identify high-risk children with asthma.

Authors:  T A Lieu; C P Quesenberry; M E Sorel; G R Mendoza; A B Leong
Journal:  Am J Respir Crit Care Med       Date:  1998-04       Impact factor: 21.405

2.  Optimum predictors of childhood asthma: persistent wheeze or the Asthma Predictive Index?

Authors:  Priyal Amin; Linda Levin; Tolly Epstein; Pat Ryan; Grace LeMasters; Gurjit Khurana Hershey; Tina Reponen; Manuel Villareal; James Lockey; David I Bernstein
Journal:  J Allergy Clin Immunol Pract       Date:  2014-11-06

Review 3.  The Asthma Predictive Index: early diagnosis of asthma.

Authors:  Jose A Castro-Rodriguez
Journal:  Curr Opin Allergy Clin Immunol       Date:  2011-06

4.  Benchmarking relief-based feature selection methods for bioinformatics data mining.

Authors:  Ryan J Urbanowicz; Randal S Olson; Peter Schmitt; Melissa Meeker; Jason H Moore
Journal:  J Biomed Inform       Date:  2018-07-17       Impact factor: 6.317

5.  Machine learning approaches to personalize early prediction of asthma exacerbations.

Authors:  Joseph Finkelstein; In Cheol Jeong
Journal:  Ann N Y Acad Sci       Date:  2016-09-14       Impact factor: 5.691

6.  Evaluation of the modified asthma predictive index in high-risk preschool children.

Authors:  Timothy S Chang; Robert F Lemanske; Theresa W Guilbert; James E Gern; Michael H Coen; Michael D Evans; Ronald E Gangnon; C David Page; Daniel J Jackson
Journal:  J Allergy Clin Immunol Pract       Date:  2013-03

7.  Multi-Institutional Sharing of Electronic Health Record Data to Assess Childhood Obesity.

Authors:  L Charles Bailey; David E Milov; Kelly Kelleher; Michael G Kahn; Mark Del Beccaro; Feliciano Yu; Thomas Richards; Christopher B Forrest
Journal:  PLoS One       Date:  2013-06-18       Impact factor: 3.240

8.  The precision-recall plot is more informative than the ROC plot when evaluating binary classifiers on imbalanced datasets.

Authors:  Takaya Saito; Marc Rehmsmeier
Journal:  PLoS One       Date:  2015-03-04       Impact factor: 3.240

9.  Factors predicting persistence of early wheezing through childhood and adolescence: a systematic review of the literature.

Authors:  Carlos E Rodríguez-Martínez; Monica P Sossa-Briceño; Jose A Castro-Rodriguez
Journal:  J Asthma Allergy       Date:  2017-03-27

Review 10.  A systematic review of predictive models for asthma development in children.

Authors:  Gang Luo; Flory L Nkoy; Bryan L Stone; Darell Schmick; Michael D Johnson
Journal:  BMC Med Inform Decis Mak       Date:  2015-11-28       Impact factor: 2.796

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  3 in total

Review 1.  Implementation of prognostic machine learning algorithms in paediatric chronic respiratory conditions: a scoping review.

Authors:  Nicole Filipow; Eleanor Main; Neil J Sebire; John Booth; Andrew M Taylor; Gwyneth Davies; Sanja Stanojevic
Journal:  BMJ Open Respir Res       Date:  2022-03

2.  Using machine learning for the personalised prediction of revision endoscopic sinus surgery.

Authors:  Mikko Nuutinen; Jari Haukka; Paula Virkkula; Paulus Torkki; Sanna Toppila-Salmi
Journal:  PLoS One       Date:  2022-04-29       Impact factor: 3.752

Review 3.  Machine learning: A modern approach to pediatric asthma.

Authors:  Giovanna Cilluffo; Salvatore Fasola; Giuliana Ferrante; Amelia Licari; Giuseppe Roberto Marseglia; Andrea Albarelli; Gian Luigi Marseglia; Stefania La Grutta
Journal:  Pediatr Allergy Immunol       Date:  2022-01       Impact factor: 5.464

  3 in total

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