Respiratory Research (Nov 2023)

Leveraging transcriptomics to develop bronchopulmonary dysplasia endotypes: a concept paper

  • Alvaro G. Moreira,
  • Tanima Arora,
  • Shreyas Arya,
  • Caitlyn Winter,
  • Charles T. Valadie,
  • Przemko Kwinta

DOI
https://doi.org/10.1186/s12931-023-02596-y
Journal volume & issue
Vol. 24, no. 1
pp. 1 – 9

Abstract

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Abstract Impact Bronchopulmonary dysplasia has multiple definitions that are currently based on phenotypic characteristics. Using an unsupervised machine learning approach, we created BPD subclasses (e.g., endotypes) by clustering whole microarray data. T helper 17 cell differentiation was the most significant pathway differentiating the BPD endotypes. Introduction Bronchopulmonary dysplasia (BPD) is the most common complication of extreme prematurity. Discovery of BPD endotypes in an unbiased format, derived from the peripheral blood transcriptome, may uncover patterns underpinning this complex lung disease. Methods An unsupervised agglomerative hierarchical clustering approach applied to genome-wide expression of profiling from 62 children at day of life five was used to identify BPD endotypes. To identify which genes were differentially expressed across the BPD endotypes, we formulated a linear model based on least-squares minimization with empirical Bayes statistics. Results Four BPD endotypes (A, B,C,D) were identified using 7,319 differentially expressed genes. Across BPD endotypes, 5,850 genes had a p value < 0.05 after multiple comparison testing. Endotype A consisted of neonates with a higher gestational age and birthweight. Endotypes B-D included neonates between 25 and 26 weeks and a birthweight range of 640 to 940 g. Endotype D appeared to have a protective role against BPD compared to Endotypes B and C (36% vs. 62% vs. 60%, respectively). The most significant pathway focused on T helper 17 cell differentiation. Conclusion Bioinformatic analyses can help identify BPD endotypes that associate with clinical definitions of BPD.