Literature DB >> 32387393

Maximizing the use of social and behavioural information from secondary care mental health electronic health records.

S M Goodday1, A Kormilitzin2, N Vaci2, Q Liu2, A Cipriani2, T Smith3, A Nevado-Holgado2.   

Abstract

PURPOSE: The contribution of social and behavioural factors in the development of mental health conditions and treatment effectiveness is widely supported, yet there are weak population level data sources on social and behavioural determinants of mental health. Enriching these data gaps will be crucial to accelerating precision medicine. Some have suggested the broader use of electronic health records (EHR) as a source of non-clinical determinants, although social and behavioural information are not systematically collected metrics in EHRs, internationally.
OBJECTIVE: In this commentary, we highlight the nature and quality of key available structured and unstructured social and behavioural data using a case example of value counts from secondary mental health data available in the UK from the UK Clinical Record Interactive Search (CRIS) database; highlight the methodological challenges in the use of such data; and possible solutions and opportunities involving the use of natural language processing (NLP) of unstructured EHR text.
CONCLUSIONS: Most structured non-clinical data fields within secondary care mental health EHR data have too much missing data for adequate use. The utility of other non-clinical fields reported semi-consistently (e.g., ethnicity and marital status) is entirely dependent on treating them appropriately in analyses, quantifying the many reasons behind missingness in consideration of selection biases. Advancements in NLP offer new opportunities in the exploitation of unstructured text from secondary care EHR data particularly given that clinical notes and attachments are available in large volumes of patients and are more routinely completed by clinicians. Tackling ways to re-use, harmonize, and improve our existing and future secondary care mental health data, leveraging advanced analytics such as NLP is worth the effort in an attempt to fill the data gap on social and behavioural contributors to mental health conditions and will be necessary to fulfill all of the domains needed to inform personalized interventions.
Copyright © 2020 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Data quality; Electronic health records; Mental health; Natural language processing; Precision medicine; Selection bias

Mesh:

Year:  2020        PMID: 32387393     DOI: 10.1016/j.jbi.2020.103429

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


  5 in total

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2.  Validation of UK Biobank data for mental health outcomes: A pilot study using secondary care electronic health records.

Authors:  Zhenpeng Li; Andrey Kormilitzin; Marco Fernandes; Nemanja Vaci; Qiang Liu; Danielle Newby; Sarah Goodday; Tanya Smith; Alejo J Nevado-Holgado; Laura Winchester
Journal:  Int J Med Inform       Date:  2022-01-24       Impact factor: 4.046

3.  Extracting social determinants of health from electronic health records using natural language processing: a systematic review.

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Journal:  J Am Med Inform Assoc       Date:  2021-11-25       Impact factor: 7.942

4.  Development and validation of a novel model for characterizing migraine outcomes within real-world data.

Authors:  Nada A Hindiyeh; Daniel Riskin; Kimberly Alexander; Roger Cady; Steven Kymes
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5.  Personalised treatment for cognitive impairment in dementia: development and validation of an artificial intelligence model.

Authors:  Qiang Liu; Nemanja Vaci; Ivan Koychev; Andrey Kormilitzin; Zhenpeng Li; Andrea Cipriani; Alejo Nevado-Holgado
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  5 in total

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