Abstract

BackgroundComponent-based structural equation modeling methods are now widely used in science, business, education, and other fields. This method uses unobservable variables, i.e., “latent” variables, and structural equation model relationships between observable variables. Here, we applied this structural equation modeling method to biologically structured data. To identify candidate drug-response biomarkers, we first used proteomic peptide-level data, as measured by multiple reaction monitoring mass spectrometry (MRM-MS), for liver cancer patients. MRM-MS is a highly sensitive and selective method for proteomic targeted quantitation of peptide abundances in complex biological samples.ResultsWe developed a component-based drug response prediction model, having the advantage that it first combines collapsed peptide-level data into protein-level information, facilitating subsequent biological interpretation. Our model also uses an alternating least squares algorithm, to efficiently estimate both coefficients of peptides and proteins. This approach also considers correlations between variables, without constraint, by a multiple testing problem. Using estimated peptide and protein coefficients, we selected significant protein biomarkers by permutation testing, resulting in our model for predicting liver cancer response to the tyrosine kinase inhibitor sorafenib.ConclusionsUsing data from a cohort of liver cancer patients, we then “fine-tuned” our model to successfully predict drug responses, as demonstrated by a high area under the curve (AUC) score. Such drug response prediction models may eventually find clinical translation in identifying individual patients likely to respond to specific therapies.

Highlights

  • Component-based structural equation modeling methods are widely used in science, business, education, and other fields

  • We evaluated the performance of our drug response prediction model

  • The positive drug response group consisted of patients with complete response (CR), partial response (PR), or stable disease (SD), according to Modified Response Evaluation Criteria in Solid Tumors (mRECIST) [20]

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Summary

Introduction

Component-based structural equation modeling methods are widely used in science, business, education, and other fields This method uses unobservable variables, i.e., “latent” variables, and structural equation model relationships between observable variables. To identify candidate drug-response biomarkers, we first used proteomic peptide-level data, as measured by multiple reaction monitoring mass spectrometry (MRM-MS), for liver cancer patients. Kim et al BMC Bioinformatics 2018, 19(Suppl 9):288 random forest [7,8,9] While these models are effective for prediction, they do not consider any structural or hidden biological data, making it difficult to derive more meaningful biological interpretation. We built a drug response prediction model, by identifying candidate protein biomarkers, via multiple reaction monitoring-mass spectrometry (MRM-MS) technology.

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