scholarly journals Identifying perinatal self-harm in electronic healthcare records using natural language processing

BJPsych Open ◽  
2021 ◽  
Vol 7 (S1) ◽  
pp. S4-S5
Author(s):  
Karyn Ayre ◽  
Andre Bittar ◽  
Rina Dutta ◽  
Somain Verma ◽  
Joyce Kam

Aims1.To generate a Natural Language Processing (NLP) application that can identify mentions of perinatal self-harm among electronic healthcare records (EHRs)2.To use this application to estimate the prevalence of perinatal self-harm within a data-linkage cohort of women accessing secondary mental healthcare during the perinatal period.MethodData source: the Clinical Record Interactive Search system. This is a database of de-identified EHRs of secondary mental healthcare service-users at South London and Maudsley NHS Foundation Trust (SLaM). CRIS has pre-existing ethical approval via the Oxfordshire Research Ethics Committee C (ref 18/SC/0372) and this project was approved by the CRIS Oversight Committee (16-069). After developing a list of synonyms for self-harm and piloting coding rules, a gold standard dataset of EHRs was manually coded using Extensible Human Oracle Suite of Tools (eHOST) software. An NLP application to detect perinatal self-harm was then developed using several layers of linguistic processing based on the spaCy NLP library for Python. Evaluation of mention-level performance was done according to the attributes of mentions the application was designed to identify (span, status, temporality and polarity), by comparing application performance against the gold standard dataset. Performance was described as precision, recall, F-score and Cohen's kappa. Most service-users had more than one EHR in their period of perinatal service use. Performance was therefore also measured at “service-user level” with additional performance metrics of likelihood ratios and post-test probabilities. Linkage with the Hospital Episode Statistics datacase allowed creation of a cohort of women who accessed SLaM during the perinatal period. By deploying the application on the EHRs of the women in the cohort, we were able to estimate the prevalence of perinatal self-harm.ResultMention-level performance: micro-averaged F-score, precision and recall for span, polarity and temporality all >0.8. Kappa for status 0.68, temporality 0.62, polarity 0.91. Service-user level performance: F-score, precision, recall all 0.69, overall F-score 0.81, positive likelihood ratio 9.4 (4.8–19), post-test probability 68.9% (95%CI 53–82).Cohort prevalence of self-harm in pregnancy was 15.3% (95% CI 14.3–16.3); self-harm in the postnatal year was 19.7% (95% CI 18.6–20.8). Only a very small proportion of women self-harmed in both pregnancy and the postnatal year (3.9%, 95% CI 3.3–4.4).ConclusionNLP can be used to identify perinatal self-harm within EHRs. The hardest attribute to classify was temporality. This is in line with the wider literature indicating temporality as a notoriously difficult problem in NLP. As a result, the application probably over-estimates prevalence, to a degree. However, overall performance, given the difficulty of the task, is good.Bearing in mind the limitations, our findings suggest that self-harm is likely to be relatively common in women accessing secondary mental healthcare during the perinatal period.Funding: KA is funded by a National Institute for Health Research Doctoral Research Fellowship (NIHR-DRF-2016-09-042). The views expressed are those of the authors and not necessarily those of the NHS, the NIHR or the Department of Health and Social Care. RD is funded by a Clinician Scientist Fellowship (research project e-HOST-IT) from the Health Foundation in partnership with the Academy of Medical Sciences which also party funds AB. AB's work was also part supported by Health Data Research UK, an initiative funded by UK Research and Innovation, Department of Health and Social Care (England) and the devolved administrations, and leading medical research charities, as well as the Maudsley Charity.Acknowledgements: Professor Louise M Howard, who originally suggested using NLP to identify perinatal self-harm in EHRs. Professor Howard is the primary supervisor of KA's Fellowship.

PLoS ONE ◽  
2021 ◽  
Vol 16 (8) ◽  
pp. e0253809
Author(s):  
Karyn Ayre ◽  
André Bittar ◽  
Joyce Kam ◽  
Somain Verma ◽  
Louise M. Howard ◽  
...  

Background Self-harm occurring within pregnancy and the postnatal year (“perinatal self-harm”) is a clinically important yet under-researched topic. Current research likely under-estimates prevalence due to methodological limitations. Electronic healthcare records (EHRs) provide a source of clinically rich data on perinatal self-harm. Aims (1) To create a Natural Language Processing (NLP) tool that can, with acceptable precision and recall, identify mentions of acts of perinatal self-harm within EHRs. (2) To use this tool to identify service-users who have self-harmed perinatally, based on their EHRs. Methods We used the Clinical Record Interactive Search system to extract de-identified EHRs of secondary mental healthcare service-users at South London and Maudsley NHS Foundation Trust. We developed a tool that applied several layers of linguistic processing based on the spaCy NLP library for Python. We evaluated mention-level performance in the following domains: span, status, temporality and polarity. Evaluation was done against a manually coded reference standard. Mention-level performance was reported as precision, recall, F-score and Cohen’s kappa for each domain. Performance was also assessed at ‘service-user’ level and explored whether a heuristic rule improved this. We report per-class statistics for service-user performance, as well as likelihood ratios and post-test probabilities. Results Mention-level performance: micro-averaged F-score, precision and recall for span, polarity and temporality >0.8. Kappa for status 0.68, temporality 0.62, polarity 0.91. Service-user level performance with heuristic: F-score, precision, recall of minority class 0.69, macro-averaged F-score 0.81, positive LR 9.4 (4.8–19), post-test probability 69.0% (53–82%). Considering the task difficulty, the tool performs well, although temporality was the attribute with the lowest level of annotator agreement. Conclusions It is feasible to develop an NLP tool that identifies, with acceptable validity, mentions of perinatal self-harm within EHRs, although with limitations regarding temporality. Using a heuristic rule, it can also function at a service-user-level.


Dementia ◽  
2017 ◽  
Vol 19 (2) ◽  
pp. 512-517
Author(s):  
Elaine Argyle ◽  
Louise Thomson ◽  
Antony Arthur ◽  
Jill Maben ◽  
Justine Schneider ◽  
...  

Although investment in staff development is a prerequisite for high-quality and innovative care, the training needs of front line care staff involved in direct care have often been neglected, particularly within dementia care provision. The Care Certificate, which was fully launched in England in April 2015, has aimed to redress this neglect by providing a consistent and transferable approach to the training of the front line health and social care workforce. This article describes the early stages of an 18-month evaluation of the Care Certificate and its implementation funded by the Department of Health Policy Research Programme.


Author(s):  
Sarah McKenna ◽  
Aideen Maguire ◽  
Dermot O'Reilly

Background Research has consistently found a high prevalence of mental ill-health among children in out-of-home care. However, results have varied significantly by study location, type of care intervention, sample population and mental health measurement, and concerns have been raised about appropriate reference populations. In addition, little is known about children known to social services who remain with their birth families. Aim To examine mental ill-health amongst children known to social services based on care exposure including those who remain at home, those placed in foster care, kinship care or institutional care and the general population not known to social services. Methods Northern Ireland is unique in that has an integrated health and social care system and holds data centrally on all children known to social services. Social services data (1995-2015) will be linked to hospital discharge data (2010-2015), prescribed medication data (2010-2015), self-harm data (2010-2015) and death records (2010-2015) to investigate mental health outcomes in terms of psychiatric hospital admissions, psychotropic medication uptake, self-harm and suicide. Results Data cleaning has been completed and analysis is underway. Preliminary results will be available by December 2019. Descriptive statistics will provide a mental health profile of children in care compared not only to children in the general population but to those who are known to social services but remain in their own home. Regression models will determine which factors are most associated with poor mental health outcomes. Conclusion This project is the UK’s first population-wide data linkage study examining the mental health of children in the social care system, including looked-after children and those known to social services who remain in their own home. Project partners in the Department of Health recognise the potential of these findings to inform future policy relating to targeting interventions for children in receipt of social care services.


2015 ◽  
Vol 5 (1) ◽  
pp. 68-74
Author(s):  
Shahid Muhammad

In ‘today's' world, technology advances are pacing and surrounding all areas of health and social care. Whilst the ‘age of technology' has its certainties, health professionals are still identifying missed opportunities in diagnosis for specific diseases and this has its own burden and impact on over budgeting and healthcare. There now seems to be charade in allocating the appropriate funds in those sectors that require more man-power than technology. In turn health has now become more about through-put then compassion (Barnett et al. 2012; Department of Health 2012; Luxford and Sutton 2014; Muhammad et al. 2015). Here, the author briefly explores the role of average health status – Health Inequalities (or Panayotov Matrix) for Assessing Impacts on Population Health and Health in All Policies (HiAP) in the ‘age of technology' and missed opportunity in diagnoses, providing a Chronic Kidney Disease (CKD) example.


2021 ◽  
Vol 32 (Sup3a) ◽  
pp. S10-S14
Author(s):  
Pauline MacDonald

The influenza immunisation season of 2020/21 was very challenging for practice nurses involved in delivering the programme. The main challenge was delivering the programme while coping with the difficulties of ensuring venues and practices were operating safely with the aim of reducing the risk of transmission of the SARS-CoV-2 virus. There has been comprehensive guidance from the Department of Health and Social Care (DHSC), Public Health England (PHE) and the Royal Colleges to support vaccination providers this year. Additionally, the vaccination programme was expanded to include more patients who are at risk of severe disease from influenza and SARS-CoV-2. This expanded programme is likely to continue in 2021/22 and guidance and directives on influenza vaccines for use in the programme are expected soon.


2021 ◽  
Vol 64 (1) ◽  
Author(s):  
Sharvari Khapre ◽  
Robert Stewart ◽  
Clare Taylor

Abstract Background Symptoms may be more useful prognostic markers for mental illness than diagnoses. We sought to investigate symptom domains in women with pre-existing severe mental illness (SMI; psychotic and bipolar disorder) as predictors of relapse risk during the perinatal period. Methods Data were obtained from electronic health records of 399 pregnant women with SMI diagnoses from a large south London mental healthcare provider. Symptoms within six domains characteristically associated with SMI (positive, negative, disorganization, mania, depression, and catatonia) recorded in clinical notes 2 years before pregnancy were identified with natural language processing algorithms to extract data from text, and associations investigated with hospitalization during pregnancy and 3 months postpartum. Results Seventy-six women (19%) relapsed during pregnancy and 107 (27%) relapsed postpartum. After adjusting for covariates, disorganization symptoms showed a positive association at borderline significance with relapse during pregnancy (adjusted odds ratio [aOR] = 1.36; 95% confidence interval [CI] = 0.99–1.87 per unit increase in number of symptoms) and depressive symptoms negatively with relapse postpartum (0.78; 0.62–0.98). Restricting the sample to women with at least one recorded symptom in any given domain, higher disorganization (1.84; 1.22–2.76), positive (1.50; 1.07–2.11), and manic (1.48; 1.03–2.11) symptoms were associated with relapse during pregnancy, and disorganization (1.54; 1.08–2.20) symptom domains were associated with relapse postpartum. Conclusions Positive, disorganization, and manic symptoms recorded in the 2 years before pregnancy were associated with increased risk of relapse during pregnancy and postpartum. The characterization of routine health records from text fields is relatively transferrable and could help inform predictive risk modelling.


2021 ◽  
Vol 23 (2) ◽  
pp. 1-5
Author(s):  
Amanda Halliwell

During the COVID-19 pandemic, after concerns were raised, the Care Quality Commission was commissioned by the Department of Health and Social care to review DNACPR decision-making. Amanda Halliwell reviews their interim report.


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