4.7 Article

Disaggregating asthma: Big investigation versus big data

Journal

JOURNAL OF ALLERGY AND CLINICAL IMMUNOLOGY
Volume 139, Issue 2, Pages 400-407

Publisher

MOSBY-ELSEVIER
DOI: 10.1016/j.jaci.2016.11.003

Keywords

Asthma; endotypes; machine learning; big data; birth cohorts

Funding

  1. Medical Research Council Career Development Fellowship [MR/M015181/1]
  2. Medical Research Council grant [MR/K002449/1]
  3. MRC [MR/K002449/2, MR/K002449/1, MR/K006665/1, G0601361, MR/M015181/1] Funding Source: UKRI
  4. Asthma UK [MRC-AsthmaUKCentre, MRC-Asthma UK Centre] Funding Source: researchfish
  5. Medical Research Council [G1000758B, G1000758, MR/K002449/2, MR/M015181/1, MR/K002449/1, MC_PC_13042, MR/K006665/1] Funding Source: researchfish

Ask authors/readers for more resources

We are facing a major challenge in bridging the gap between identifying subtypes of asthma to understand causal mechanisms and translating this knowledge into personalized prevention and management strategies. In recent years, '' big data'' has been sold as a panacea for generating hypotheses and driving new frontiers of health care; the idea that the data must and will speak for themselves is fast becoming a new dogma. One of the dangers of ready accessibility of health care data and computational tools for data analysis is that the process of data mining can become uncoupled from the scientific process of clinical interpretation, understanding the provenance of the data, and external validation. Although advances in computational methods can be valuable for using unexpected structure in data to generate hypotheses, there remains a need for testing hypotheses and interpreting results with scientific rigor. We argue for combining data- and hypothesis-driven methods in a careful synergy, and the importance of carefully characterized birth and patient cohorts with genetic, phenotypic, biological, and molecular data in this process cannot be overemphasized. The main challenge on the road ahead is to harness bigger health care data in ways that produce meaningful clinical interpretation and to translate this into better diagnoses and properly personalized prevention and treatment plans. There is a pressing need for cross-disciplinary research with an integrative approach to data science, whereby basic scientists, clinicians, data analysts, and epidemiologists work together to understand the heterogeneity of asthma.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available