“How Is My Child’s Asthma?” Digital Phenotype and Actionable Insights for Pediatric Asthma

Background In the traditional asthma management protocol, a child meets with a clinician infrequently, once in 3 to 6 months, and is assessed using the Asthma Control Test questionnaire. This information is inadequate for timely determination of asthma control, compliance, precise diagnosis of the cause, and assessing the effectiveness of the treatment plan. The continuous monitoring and improved tracking of the child’s symptoms, activities, sleep, and treatment adherence can allow precise determination of asthma triggers and a reliable assessment of medication compliance and effectiveness. Digital phenotyping refers to moment-by-moment quantification of the individual-level human phenotype in situ using data from personal digital devices, in particular, mobile phones. The kHealth kit consists of a mobile app, provided on an Android tablet, that asks timely and contextually relevant questions related to asthma symptoms, medication intake, reduced activity because of symptoms, and nighttime awakenings; a Fitbit to monitor activity and sleep; a Microlife Peak Flow Meter to monitor the peak expiratory flow and forced exhaled volume in 1 second; and a Foobot to monitor indoor air quality. The kHealth cloud stores personal health data and environmental data collected using Web services. The kHealth Dashboard interactively visualizes the collected data. Objective The objective of this study was to discuss the usability and feasibility of collecting clinically relevant data to help clinicians diagnose or intervene in a child’s care plan by using the kHealth system for continuous and comprehensive monitoring of child’s symptoms, activity, sleep pattern, environmental triggers, and compliance. The kHealth system helps in deriving actionable insights to help manage asthma at both the personal and cohort levels. The Digital Phenotype Score and Controller Compliance Score introduced in the study are the basis of ongoing work on addressing personalized asthma care and answer questions such as, “How can I help my child better adhere to care instructions and reduce future exacerbation?” Methods The Digital Phenotype Score and Controller Compliance Score summarize the child’s condition from the data collected using the kHealth kit to provide actionable insights. The Digital Phenotype Score formalizes the asthma control level using data about symptoms, rescue medication usage, activity level, and sleep pattern. The Compliance Score captures how well the child is complying with the treatment protocol. We monitored and analyzed data for 95 children, each recruited for a 1- or 3-month-long study. The Asthma Control Test scores obtained from the medical records of 57 children were used to validate the asthma control levels calculated using the Digital Phenotype Scores. Results At the cohort level, we found asthma was very poorly controlled in 37% (30/82) of the children, not well controlled in 26% (21/82), and well controlled in 38% (31/82). Among the very poorly controlled children (n=30), we found 30% (9/30) were highly compliant toward their controller medication intake—suggesting a re-evaluation for change in medication or dosage—whereas 50% (15/30) were poorly compliant and candidates for a more timely intervention to improve compliance to mitigate their situation. We observed a negative Kendall Tau correlation between Asthma Control Test scores and Digital Phenotype Score as −0.509 (P<.01). Conclusions kHealth kit is suitable for the collection of clinically relevant information from pediatric patients. Furthermore, Digital Phenotype Score and Controller Compliance Score, computed based on the continuous digital monitoring, provide the clinician with timely and detailed evidence of a child’s asthma-related condition when compared with the Asthma Control Test scores taken infrequently during clinic visits.

[1]  Tjard Schermer,et al.  How does asthma influence the daily life of children? Results of focus group interviews , 2010, Health and quality of life outcomes.

[2]  W. Teague,et al.  Measurement characteristics of the childhood Asthma-Control Test and a shortened, child-only version , 2016, npj Primary Care Respiratory Medicine.

[3]  C. Rand,et al.  Measurement of children's asthma medication adherence by self report, mother report, canister weight, and Doser CT. , 2000, Annals of allergy, asthma & immunology : official publication of the American College of Allergy, Asthma, & Immunology.

[4]  Peter D Sly,et al.  Providing Feedback on Adherence Increases Use of Preventive Medication by Asthmatic Children , 2010, The Journal of asthma : official journal of the Association for the Care of Asthma.

[5]  Tanvi Banerjee,et al.  Investigation of an Indoor Air Quality Sensor for Asthma Management in Children , 2017, IEEE Sensors Letters.

[6]  C. Rand,et al.  Impact of Interview Mode on Accuracy of Child and Parent Report of Adherence With Asthma-Controller Medication , 2007, Pediatrics.

[7]  Magdalena Niewiadomska-Bugaj,et al.  Association of zero-inflated continuous variables , 2015 .

[8]  Tobias Kowatsch,et al.  The Potential of Mobile Apps for Improving Asthma Self-Management: A Review of Publicly Available and Well-Adopted Asthma Apps , 2017, JMIR mHealth and uHealth.

[9]  M. Blaiss,et al.  The Childhood Asthma Control Test: retrospective determination and clinical validation of a cut point to identify children with very poorly controlled asthma. , 2010, The Journal of allergy and clinical immunology.

[10]  Heping Zhang,et al.  An Association Test for Multiple Traits Based on the Generalized Kendall’s Tau , 2010, Journal of the American Statistical Association.

[11]  Amit P. Sheth,et al.  Toward Practical Privacy-Preserving Analytics for IoT and Cloud-Based Healthcare Systems , 2018, IEEE Internet Computing.

[12]  W. Carroll Limitations of asthma control questionnaires in the management and follow up of childhood asthma. , 2013, Paediatric respiratory reviews.

[13]  A. Sheth Sensor Data Streams Correlation Platform for Asthma Management , 2018 .

[14]  Philip Marcus,et al.  Development of the asthma control test: a survey for assessing asthma control. , 2004, The Journal of allergy and clinical immunology.

[15]  Amit P. Sheth,et al.  How Will the Internet of Things Enable Augmented Personalized Health? , 2017, IEEE Intelligent Systems.

[16]  M. Barrett,et al.  Digital Health Intervention for Asthma: Patient-Reported Value and Usability , 2018, JMIR mHealth and uHealth.

[17]  Brian W. Powers,et al.  The digital phenotype , 2015, Nature Biotechnology.

[18]  Amit P. Sheth,et al.  Augmented Personalized Health: Using Semantically Integrated Multimodal Data for Patient Empowered Health Management Strategies , 2018 .

[19]  Megan L Ranney,et al.  Patient engagement and the design of digital health. , 2015, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[20]  Yong Zhu,et al.  Low-Power Wearable Systems for Continuous Monitoring of Environment and Health for Chronic Respiratory Disease , 2016, IEEE Journal of Biomedical and Health Informatics.

[21]  R. Spitzer,et al.  The PHQ-9 , 2001, Journal of General Internal Medicine.