K. Raja
University of Michigan
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Publication
Featured researches published by K. Raja.
Comparative and Functional Genomics | 2017
K. Raja; M.T. Patrick; Yilin Gao; Desmond Madu; Yuyang Yang; Lam C. Tsoi
In the past decade, the volume of “omics” data generated by the different high-throughput technologies has expanded exponentially. The managing, storing, and analyzing of this big data have been a great challenge for the researchers, especially when moving towards the goal of generating testable data-driven hypotheses, which has been the promise of the high-throughput experimental techniques. Different bioinformatics approaches have been developed to streamline the downstream analyzes by providing independent information to interpret and provide biological inference. Text mining (also known as literature mining) is one of the commonly used approaches for automated generation of biological knowledge from the huge number of published articles. In this review paper, we discuss the recent advancement in approaches that integrate results from omics data and information generated from text mining approaches to uncover novel biomedical information.
Scientific Reports | 2017
K. Raja; M.T. Patrick; James T. Elder; Lam C. Tsoi
Adverse drug reactions (ADRs) pose critical public health issues, affecting over 6% of hospitalized patients. While knowledge of potential drug-drug interactions (DDI) is necessary to prevent ADR, the rapid pace of drug discovery makes it challenging to maintain a strong insight into DDIs. In this study, we present a novel literature-mining framework for enhancing the predictions of DDIs and ADR types by integrating drug-gene interactions (DGIs). The ADR types were adapted from a DDI corpus, including i) adverse effect; ii) effect at molecular level; iii) effect related to pharmacokinetics; and iv) DDIs without known ADRs. By using random forest classifier our approach achieves an F-score of 0.87 across the ADRs classification using only the DDI features. We then enhanced the performance of the classifier by including DGIs (F-score = 0.90), and applied the classification model trained with the DDI corpus to identify the drugs that might interact with the drugs for cutaneous diseases. We successfully predict previously known ADRs for drugs prescribed to cutaneous diseases, and are also able to identify promising new ADRs.
Nature Communications | 2018
M.T. Patrick; Philip E. Stuart; K. Raja; Johann E. Gudjonsson; Trilokraj Tejasvi; Jingjing Yang; Vinod Chandran; Sayantan Das; Kristina Callis-Duffin; Eva Ellinghaus; Charlotta Enerbäck; Tonu Esko; Andre Franke; Hyun Min Kang; Gerald G. Krueger; Henry W. Lim; Proton Rahman; Cheryl F. Rosen; Stephan Weidinger; Michael Weichenthal; Xiaoquan Wen; John J. Voorhees; Gonçalo R. Abecasis; Dafna D. Gladman; Rajan P. Nair; James T. Elder; Lam C. Tsoi
Psoriatic arthritis (PsA) is a complex chronic musculoskeletal condition that occurs in ~30% of psoriasis patients. Currently, no systematic strategy is available that utilizes the differences in genetic architecture between PsA and cutaneous-only psoriasis (PsC) to assess PsA risk before symptoms appear. Here, we introduce a computational pipeline for predicting PsA among psoriasis patients using data from six cohorts with >7000 genotyped PsA and PsC patients. We identify 9 new loci for psoriasis or its subtypes and achieve 0.82 area under the receiver operator curve in distinguishing PsA vs. PsC when using 200 genetic markers. Among the top 5% of our PsA prediction we achieve >90% precision with 100% specificity and 16% recall for predicting PsA among psoriatic patients, using conditional inference forest or shrinkage discriminant analysis. Combining statistical and machine-learning techniques, we show that the underlying genetic differences between psoriasis subtypes can be used for individualized subtype risk assessment.Approximately 30% of psoriasis patients develop psoriatic arthritis (PsA) and early diagnosis is crucial for the management of PsA. Here, Patrick et al. develop a computational pipeline involving statistical and machine-learning methods that can assess the risk of progression to PsA based on genetic markers.
Journal of Investigative Dermatology | 2018
M.T. Patrick; K. Raja; Keylonnie Miller; Jason Sotzen; Johann E. Gudjonsson; James T. Elder; Lam C. Tsoi
Immune-mediated diseases affect more than 20% of the population, and many autoimmune diseases affect the skin. Drug repurposing (or repositioning) is a cost-effective approach for finding drugs that can be used to treat diseases for which they are currently not prescribed. We implemented an efficient bioinformatics approach using word embedding to summarize drug information from more than 20 million articles and applied machine learning to model the drug-disease relationship. We trained our drug repurposing approach separately on nine cutaneous diseases (including psoriasis, atopic dermatitis, and alopecia areata) and eight other immune-mediated diseases and obtained a mean area under the receiver operating characteristic of 0.93 in cross-validation. Focusing in particular on psoriasis, a chronic inflammatory condition of skin that affects more than 100 million people worldwide, we were able to confirm drugs that are known to be effective for psoriasis and to identify potential candidates used to treat other diseases. Furthermore, the targets of drug candidates predicted by our approach were significantly enriched among genes differentially expressed in psoriatic lesional skin from a large-scale RNA sequencing cohort. Although our algorithm cannot be used to determine clinical efficacy, our work provides an approach for suggesting drugs for repurposing to immune-mediated cutaneous diseases.
Journal of Investigative Dermatology | 2018
M.T. Patrick; Philip E. Stuart; K. Raja; J. Yang; Matthew Zawistowski; John J. Voorhees; Trilokraj Tejasvi; Johann E. Gudjonsson; Vinod Chandran; Proton Rahman; Rajan P. Nair; Dafna D. Gladman; James T. Elder; Lam C. Tsoi
Journal of Investigative Dermatology | 2018
Lam C. Tsoi; E. Rodrigues; F. Degenhardt; H. Baurecht; U. Wehkamp; N. Volks; S. Szymczak; William R. Swindell; Mrinal K. Sarkar; K. Raja; M.T. Patrick; Y. Gao; R. Uppala; B.E. Perez White; S. Getsios; Paul W. Harms; Emanual Maverakis; James T. Elder; Andrea Franke; Johann E. Gudjonsson; S. Weidinger
Journal of Investigative Dermatology | 2018
M.T. Patrick; Philip E. Stuart; J. Yang; K. Raja; Y. Yang; D. Madu; Trilokraj Tejasvi; John J. Voorhees; Hyun Min Kang; Johann E. Gudjonsson; Gonc¸alo R. Abecasis; Rajan P. Nair; X. Wen; James T. Elder; Lam C. Tsoi
The Journal of Allergy and Clinical Immunology | 2017
Lam C. Tsoi; Jingjing Yang; Yun Liang; Mrinal K. Sarkar; Xianying Xing; M.A. Beamer; Abhishek Aphale; K. Raja; Jeffrey H. Kozlow; Spiro Getsios; John J. Voorhees; J. Michelle Kahlenberg; James T. Elder; Johann E. Gudjonsson
Journal of Investigative Dermatology | 2017
Lam C. Tsoi; J. Yang; Yun Liang; Mrinal K. Sarkar; Xianying Xing; M.A. Beamer; Abhishek Aphale; K. Raja; Jeffrey H. Kozlow; Spiro Getsios; John J. Voorhees; J.M. Kahlenberg; James T. Elder; Johann E. Gudjonsson
Journal of Investigative Dermatology | 2017
M.T. Patrick; Philip E. Stuart; K. Raja; Johann E. Gudjonsson; Trilokraj Tejasvi; John J. Voorhees; Dafna D. Gladman; Rajan P. Nair; James T. Elder; Lam C. Tsoi