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Identification of usual interstitial pneumonia pattern using RNA-Seq and machine learning: challenges and solutions
Authors:Yoonha Choi  Tiffany Ting Liu  Daniel G. Pankratz  Thomas V. Colby  Neil M. Barth  David A. Lynch  P. Sean Walsh  Ganesh Raghu  Giulia C. Kennedy  Jing Huang
Affiliation:1.Veracyte, Inc,South San Francisco,USA;2.Department of Laboratory Medicine and Pathology,Mayo Clinic,Scottsdale,USA;3.Department of Radiology,National Jewish Health,Denver,USA;4.Department of Medicine and Laboratory Medicine,University of Washington Medical Center,Seattle,USA
Abstract:

Background

We developed a classifier using RNA sequencing data that identifies the usual interstitial pneumonia (UIP) pattern for the diagnosis of idiopathic pulmonary fibrosis. We addressed significant challenges, including limited sample size, biological and technical sample heterogeneity, and reagent and assay batch effects.

Results

We identified inter- and intra-patient heterogeneity, particularly within the non-UIP group. The models classified UIP on transbronchial biopsy samples with a receiver-operating characteristic area under the curve of ~?0.9 in cross-validation. Using in silico mixed samples in training, we prospectively defined a decision boundary to optimize specificity at ≥85%. The penalized logistic regression model showed greater reproducibility across technical replicates and was chosen as the final model. The final model showed sensitivity of 70% and specificity of 88% in the test set.

Conclusions

We demonstrated that the suggested methodologies appropriately addressed challenges of the sample size, disease heterogeneity and technical batch effects and developed a highly accurate and robust classifier leveraging RNA sequencing for the classification of UIP.
Keywords:
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