Literature DB >> 28576748

Automatic recognition of symptom severity from psychiatric evaluation records.

Travis R Goodwin1, Ramon Maldonado2, Sanda M Harabagiu3.   

Abstract

This paper presents a novel method for automatically recognizing symptom severity by using natural language processing of psychiatric evaluation records to extract features that are processed by machine learning techniques to assign a severity score to each record evaluated in the 2016 RDoC for Psychiatry Challenge from CEGS/N-GRID. The natural language processing techniques focused on (a) discerning the discourse information expressed in questions and answers; (b) identifying medical concepts that relate to mental disorders; and (c) accounting for the role of negation. The machine learning techniques rely on the assumptions that (1) the severity of a patient's positive valence symptoms exists on a latent continuous spectrum and (2) all the patient's answers and narratives documented in the psychological evaluation records are informed by the patient's latent severity score along this spectrum. These assumptions motivated our two-step machine learning framework for automatically recognizing psychological symptom severity. In the first step, the latent continuous severity score is inferred from each record; in the second step, the severity score is mapped to one of the four discrete severity levels used in the CEGS/N-GRID challenge. We evaluated three methods for inferring the latent severity score associated with each record: (i) pointwise ridge regression; (ii) pairwise comparison-based classification; and (iii) a hybrid approach combining pointwise regression and the pairwise classifier. The second step was implemented using a tree of cascading support vector machine (SVM) classifiers. While the official evaluation results indicate that all three methods are promising, the hybrid approach not only outperformed the pairwise and pointwise methods, but also produced the second highest performance of all submissions to the CEGS/N-GRID challenge with a normalized MAE score of 84.093% (where higher numbers indicate better performance). These evaluation results enabled us to observe that, for this task, considering pairwise information can produce more accurate severity scores than pointwise regression - an approach widely used in other systems for assigning severity scores. Moreover, our analysis indicates that using a cascading SVM tree outperforms traditional SVM classification methods for the purpose of determining discrete severity levels.
Copyright © 2017. Published by Elsevier Inc.

Entities:  

Keywords:  Healthcare informatics; Pairwise transform; Random forest; Ridge regression; Support vector machine; Symptom severity

Mesh:

Year:  2017        PMID: 28576748      PMCID: PMC5705296          DOI: 10.1016/j.jbi.2017.05.020

Source DB:  PubMed          Journal:  J Biomed Inform        ISSN: 1532-0464            Impact factor:   6.317


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8.  Clinical arrays of laboratory measures, or "clinarrays", built from an electronic health record enable disease subtyping by severity.

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Review 9.  Multiple organ dysfunction score: a reliable descriptor of a complex clinical outcome.

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  4 in total

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2.  Assessing the severity of positive valence symptoms in initial psychiatric evaluation records: Should we use convolutional neural networks?

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Review 3.  Symptom severity prediction from neuropsychiatric clinical records: Overview of 2016 CEGS N-GRID shared tasks Track 2.

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Review 4.  Machine Learning and Natural Language Processing in Mental Health: Systematic Review.

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