Literature DB >> 25552936

Efficient Inference of Gaussian-Process-Modulated Renewal Processes with Application to Medical Event Data.

Thomas A Lasko1.   

Abstract

The episodic, irregular and asynchronous nature of medical data render them difficult substrates for standard machine learning algorithms. We would like to abstract away this difficulty for the class of time-stamped categorical variables (or events) by modeling them as a renewal process and inferring a probability density over non-parametric longitudinal intensity functions that modulate the process. Several methods exist for inferring such a density over intensity functions, but either their constraints prevent their use with our potentially bursty event streams, or their time complexity renders their use intractable on our long-duration observations of high-resolution events, or both. In this paper we present a new efficient and flexible inference method that uses direct numeric integration and smooth interpolation over Gaussian processes. We demonstrate that our direct method is up to twice as accurate and two orders of magnitude more efficient than the best existing method (thinning). Importantly, our direct method can infer intensity functions over the full range of bursty to memoryless to regular events, which thinning and many other methods cannot do. Finally, we apply the method to clinical event data and demonstrate a simple example application facilitated by the abstraction.

Entities:  

Year:  2014        PMID: 25552936      PMCID: PMC4278374     

Source DB:  PubMed          Journal:  Uncertain Artif Intell        ISSN: 1525-3384


  1 in total

1.  Computational phenotype discovery using unsupervised feature learning over noisy, sparse, and irregular clinical data.

Authors:  Thomas A Lasko; Joshua C Denny; Mia A Levy
Journal:  PLoS One       Date:  2013-06-24       Impact factor: 3.240

  1 in total
  5 in total

1.  Comparing lagged linear correlation, lagged regression, Granger causality, and vector autoregression for uncovering associations in EHR data.

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Journal:  AMIA Annu Symp Proc       Date:  2017-02-10

2.  Alternating Gaussian Process Modulated Renewal Processes for Modeling Threshold Exceedances and Durations.

Authors:  Erin M Schliep; Alan E Gelfand; David M Holland
Journal:  Stoch Environ Res Risk Assess       Date:  2018-02       Impact factor: 3.379

Review 3.  Health Informatics via Machine Learning for the Clinical Management of Patients.

Authors:  D A Clifton; K E Niehaus; P Charlton; G W Colopy
Journal:  Yearb Med Inform       Date:  2015-08-13

4.  Nonstationary Gaussian Process Regression for Evaluating Clinical Laboratory Test Sampling Strategies.

Authors:  Thomas A Lasko
Journal:  Proc Conf AAAI Artif Intell       Date:  2015-01

5.  Safety analytics at a granular level using a Gaussian process modulated renewal model: A case study of the COVID-19 pandemic.

Authors:  Yiyuan Lei; Kaan Ozbay; Kun Xie
Journal:  Accid Anal Prev       Date:  2022-05-23
  5 in total

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