Literature DB >> 33691018

Optimization of Genomic Classifiers for Clinical Deployment: Evaluation of Bayesian Optimization to Select Predictive Models of Acute Infection and In-Hospital Mortality.

Michael B Mayhew1, Elizabeth Tran, Kirindi Choi, Uros Midic, Roland Luethy, Nandita Damaraju, Ljubomir Buturovic.   

Abstract

Acute infection, if not rapidly and accurately detected, can lead to sepsis, organ failure and even death. Current detection of acute infection as well as assessment of a patient's severity of illness are imperfect. Characterization of a patient's immune response by quantifying expression levels of specific genes from blood represents a potentially more timely and precise means of accomplishing both tasks. Machine learning methods provide a platform to leverage this host response for development of deployment-ready classification models. Prioritization of promising classifiers is dependent, in part, on hyperparameter optimization for which a number of approaches including grid search, random sampling and Bayesian optimization have been shown to be effective. We compare HO approaches for the development of diagnostic classifiers of acute infection and in-hospital mortality from gene expression of 29 diagnostic markers. We take a deployment-centered approach to our comprehensive analysis, accounting for heterogeneity in our multi-study patient cohort with our choices of dataset partitioning and hyperparameter optimization objective as well as assessing selected classifiers in external (as well as internal) validation. We find that classifiers selected by Bayesian optimization for in-hospital mortality can outperform those selected by grid search or random sampling. However, in contrast to previous research: 1) Bayesian optimization is not more efficient in selecting classifiers in all instances compared to grid search or random sampling-based methods and 2) we note marginal gains in classifier performance in only specific circumstances when using a common variant of Bayesian optimization (i.e. automatic relevance determination). Our analysis highlights the need for further practical, deployment-centered benchmarking of HO approaches in the healthcare context.

Entities:  

Year:  2021        PMID: 33691018

Source DB:  PubMed          Journal:  Pac Symp Biocomput        ISSN: 2335-6928


  4 in total

1.  Comparison of Machine-Learning Algorithms for the Prediction of Current Procedural Terminology (CPT) Codes from Pathology Reports.

Authors:  Joshua Levy; Nishitha Vattikonda; Christian Haudenschild; Brock Christensen; Louis Vaickus
Journal:  J Pathol Inform       Date:  2022-01-05

2.  A robust gene expression signature for NASH in liver expression data.

Authors:  Yehudit Hasin-Brumshtein; Suraj Sakaram; Purvesh Khatri; Yudong D He; Timothy E Sweeney
Journal:  Sci Rep       Date:  2022-02-16       Impact factor: 4.379

3.  COVID-19 diagnosis on CT images with Bayes optimization-based deep neural networks and machine learning algorithms.

Authors:  Murat Canayaz; Sanem Şehribanoğlu; Recep Özdağ; Murat Demir
Journal:  Neural Comput Appl       Date:  2022-02-28       Impact factor: 5.102

4.  A 6-mRNA host response classifier in whole blood predicts outcomes in COVID-19 and other acute viral infections.

Authors:  Ljubomir Buturovic; Hong Zheng; Benjamin Tang; Kevin Lai; Win Sen Kuan; Mark Gillett; Rahul Santram; Maryam Shojaei; Raquel Almansa; Jose Ángel Nieto; Sonsoles Muñoz; Carmen Herrero; Nikolaos Antonakos; Panayiotis Koufargyris; Marina Kontogiorgi; Georgia Damoraki; Oliver Liesenfeld; James Wacker; Uros Midic; Roland Luethy; David Rawling; Melissa Remmel; Sabrina Coyle; Yiran E Liu; Aditya M Rao; Denis Dermadi; Jiaying Toh; Lara Murphy Jones; Michele Donato; Purvesh Khatri; Evangelos J Giamarellos-Bourboulis; Timothy E Sweeney
Journal:  Sci Rep       Date:  2022-01-18       Impact factor: 4.379

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.