scholarly journals A class-contrastive human-interpretable machine learning approach to predict mortality in severe mental illness

2021 ◽  
Vol 7 (1) ◽  
Author(s):  
Soumya Banerjee ◽  
Pietro Lio ◽  
Peter B. Jones ◽  
Rudolf N. Cardinal

AbstractMachine learning (ML), one aspect of artificial intelligence (AI), involves computer algorithms that train themselves. They have been widely applied in the healthcare domain. However, many trained ML algorithms operate as ‘black boxes’, producing a prediction from input data without a clear explanation of their workings. Non-transparent predictions are of limited utility in many clinical domains, where decisions must be justifiable. Here, we apply class-contrastive counterfactual reasoning to ML to demonstrate how specific changes in inputs lead to different predictions of mortality in people with severe mental illness (SMI), a major public health challenge. We produce predictions accompanied by visual and textual explanations as to how the prediction would have differed given specific changes to the input. We apply it to routinely collected data from a mental health secondary care provider in patients with schizophrenia. Using a data structuring framework informed by clinical knowledge, we captured information on physical health, mental health, and social predisposing factors. We then trained an ML algorithm and other statistical learning techniques to predict the risk of death. The ML algorithm predicted mortality with an area under receiver operating characteristic curve (AUROC) of 0.80 (95% confidence intervals [0.78, 0.82]). We used class-contrastive analysis to produce explanations for the model predictions. We outline the scenarios in which class-contrastive analysis is likely to be successful in producing explanations for model predictions. Our aim is not to advocate for a particular model but show an application of the class-contrastive analysis technique to electronic healthcare record data for a disease of public health significance. In patients with schizophrenia, our work suggests that use or prescription of medications like antidepressants was associated with lower risk of death. Abuse of alcohol/drugs and a diagnosis of delirium were associated with higher risk of death. Our ML models highlight the role of co-morbidities in determining mortality in patients with schizophrenia and the need to manage co-morbidities in these patients. We hope that some of these bio-social factors can be targeted therapeutically by either patient-level or service-level interventions. Our approach combines clinical knowledge, health data, and statistical learning, to make predictions interpretable to clinicians using class-contrastive reasoning. This is a step towards interpretable AI in the management of patients with schizophrenia and potentially other diseases.

2021 ◽  
Author(s):  
Soumya Banerjee ◽  
Pietro Lio ◽  
Peter B Jones ◽  
Rudolf Nicholas Cardinal

Background. Machine learning (ML), one aspect of artificial intelligence (AI), involves computer algorithms that train themselves. They have been widely applied in the healthcare domain. However, many trained ML algorithms operate as black boxes, producing a prediction from input data without a clear explanation of their workings. Non-transparent predictions are of limited utility in many clinical domains, where decisions must be justifiable. Methods. Here, we apply class-contrastive counterfactual reasoning to ML to demonstrate how specific changes in inputs lead to different predictions of mortality in people with severe mental illness (SMI), a major public health challenge. We produce predictions accompanied by visual and textual explanations as to how the prediction would have differed given specific changes to the input. We apply it to routinely collected data from a mental health secondary care provider in patients with schizophrenia. Using a data structuring framework informed by clinical knowledge, we captured information on physical health, mental health, and social predisposing factors. We then trained an ML algorithm to predict the risk of death. Results. The ML algorithm predicted mortality with an area under receiver operating characteristic curve (AUROC) of 0.8 (compared to an AUROC of 0.67 from a logistic regression model), and produced class-contrastive explanations for its predictions. Conclusions. In patients with schizophrenia, our work suggests that use of medications like second generation antipsychotics and antidepressants was associated with lower risk of death. Abuse of alcohol/drugs and a diagnosis of delirium were associated with higher risk of death. Our ML models highlight the role of co-morbidities in determining mortality in patients with SMI and the need to manage them. We hope that some of these bio-social factors can be targeted therapeutically by either patient-level or service-level interventions. This approach combines clinical knowledge, health data, and statistical learning, to make predictions interpretable to clinicians using class-contrastive reasoning. This is a step towards interpretable AI in the management of patients with SMI and potentially other diseases.


2020 ◽  
Vol 54 (11) ◽  
pp. 1107-1114
Author(s):  
Ruth Cunningham ◽  
James Stanley ◽  
Tracy Haitana ◽  
Suzanne Pitama ◽  
Marie Crowe ◽  
...  

Aims: There is very little empirical evidence about the relationship between severe mental illness and the physical health of Indigenous peoples. This paper aims to compare the physical health of Māori and non-Māori with a diagnosis of bipolar disorder in contact with NZ mental health services. Methods: A cohort of Māori and non-Māori with a current bipolar disorder diagnosis at 1 January 2010 were identified from routine mental health services data and followed up for non-psychiatric hospital admissions and deaths over the subsequent 5 years. Results: Māori with bipolar disorder had a higher level of morbidity and a higher risk of death from natural causes compared to non-Māori with the same diagnosis, indicating higher levels of physical health need. The rate of medical and surgical hospitalisation was not higher among Māori compared to non-Māori (as might be expected given increased health needs) which suggests under-treatment of physical health conditions in this group may be a factor in the observed higher risk of mortality from natural causes for Māori. Conclusion: This study provides the first indication that systemic factors which cause health inequities between Māori and non-Māori are compounded for Māori living with severe mental illness. Further exploration of other diagnostic groups and subgroups is needed to understand the best approach to reducing these inequalities.


2018 ◽  
Vol 63 (7) ◽  
pp. 492-500 ◽  
Author(s):  
David Rudoler ◽  
Claire de Oliveira ◽  
Binu Jacob ◽  
Melonie Hopkins ◽  
Paul Kurdyak

Objective: The objective of this article was to conduct a cost analysis comparing the costs of a supportive housing intervention to inpatient care for clients with severe mental illness who were designated alternative-level care while inpatient at the Centre for Addiction and Mental Health in Toronto. The intervention, called the High Support Housing Initiative, was implemented in 2013 through a collaboration between 15 agencies in the Toronto area. Method: The perspective of this cost analysis was that of the Ontario Ministry of Health and Long-Term Care. We compared the cost of inpatient mental health care to high-support housing. Cost data were derived from a variety of sources, including health administrative data, expenditures reported by housing providers, and document analysis. Results: The High Support Housing Initiative was cost saving relative to inpatient care. The average cost savings per diem were between $140 and $160. This amounts to an annual cost savings of approximately $51,000 to $58,000. When tested through sensitivity analysis, the intervention remained cost saving in most scenarios; however, the result was highly sensitive to health system costs for clients of the High Support Housing Initiative program. Conclusions: This study suggests the High Support Housing Initiative is potentially cost saving relative to inpatient hospitalization at the Centre for Addiction and Mental Health.


2007 ◽  
Vol 43 (6) ◽  
pp. 565-581 ◽  
Author(s):  
Peter J. Kelly ◽  
Frank P. Deane ◽  
Robert King ◽  
Nikolaos Kazantzis ◽  
Trevor P. Crowe

2009 ◽  
Vol 24 (3) ◽  
pp. 313-318 ◽  
Author(s):  
Todd P. Gilmer ◽  
Victoria D. Ojeda ◽  
Dahlia Fuentes ◽  
Viviana Criado ◽  
Piedad Garcia

2021 ◽  
pp. 136346152110583
Author(s):  
Evgeny Knaifel

The successful integration of cultural competence with evidence-based practices in mental health services is still limited for particular cultural populations. The current study explored culturally adapted family psychoeducation intervention for immigrants from the former Soviet Union (FSU) in Israel who care for a family member with severe mental illness (SMI). Semi-structured in-depth interviews were conducted with 18 immigrant mothers about their experience of taking part in Russian-speaking multi-family psychoeducation groups (MFPGs). Qualitative content analysis revealed five salient processes and changes that participants attributed to their engagement in the intervention: 1) from a language barrier to utilization of and satisfaction with services; 2) from a lack of information to acquiring new mental health knowledge; 3) from harboring a family secret to exposure and sharing; 4) from social isolation to cultural belonging and support; 5) from families blurring boundaries to physical and emotional separation. The results showed that these changes—linguistic, cognitive, emotional, socio-cultural and relational—improved family coping and recovery. Implications for cultural adaptation of family psychoeducation for Russian-speaking immigrants are discussed.


2021 ◽  
pp. 000486742110314
Author(s):  
Rachael C Cvejic ◽  
Preeyaporn Srasuebkul ◽  
Adrian R Walker ◽  
Simone Reppermund ◽  
Julia M Lappin ◽  
...  

Objective: To describe and compare the health profiles and health service use of people hospitalised with severe mental illness, with and without psychotic symptoms. Methods: We conducted a historical cohort study using linked administrative datasets, including data on public hospital admissions, emergency department presentations and ambulatory mental health service contacts in New South Wales, Australia. The study cohort comprised 169,306 individuals aged 12 years and over who were hospitalised at least once with a mental health diagnosis between 1 July 2002 and 31 December 2014. Of these, 63,110 had a recorded psychotic illness and 106,196 did not. Outcome measures were rates of hospital, emergency department and mental health ambulatory service utilisation, analysed using Poisson regression. Results: People with psychotic illnesses had higher rates of hospital admission (adjusted incidence rate ratio (IRR) 1.26; 95% confidence interval [1.23, 1.30]), emergency department presentation (adjusted IRR 1.17; 95% confidence interval [1.13, 1.20]) and ambulatory mental health treatment days (adjusted IRR 2.90; 95% confidence interval [2.82, 2.98]) than people without psychotic illnesses. The higher rate of hospitalisation among people with psychotic illnesses was driven by mental health admissions; while people with psychosis had over twice the rate of mental health admissions, people with other severe mental illnesses without psychosis (e.g. mood/affective, anxiety and personality disorders) had higher rates of physical health admissions, including for circulatory, musculoskeletal, genitourinary and respiratory disorders. Factors that predicted greater health service utilisation included psychosis, intellectual disability, greater medical comorbidity and previous hospitalisation. Conclusion: Findings from this study support the need for (a) the development of processes to support the physical health of people with severe mental illness, including those without psychosis; (b) a focus in mental health policy and service provision on people with complex support needs, and (c) improved implementation and testing of integrated models of care to improve health outcomes for all people experiencing severe mental illness.


1999 ◽  
Vol 174 (4) ◽  
pp. 346-352 ◽  
Author(s):  
Anthony F. Lehman ◽  
Lisa Dixon ◽  
Jeffrey S. Hoch ◽  
Bruce Deforge ◽  
Eimer Kernan ◽  
...  

BackgroundHomelessness is a major public health problem among persons with severe mental illness (SMI). Cost-effective programmes that address this problem are needed.AimsTo evaluate the cost-effectiveness of an assertive community treatment (ACT) programme for these persons in Baltimore, Maryland.MethodsA total of 152 homeless persons with SMI were randomly allocated to either ACT or usual services. Direct treatment costs and effectiveness, represented by days of stable housing, were assessed.ResultsCompared with usual care, ACT costs were significantly lower for mental health in-patient days and mental health emergency room care, and significantly higher for mental health out-patient visits and treatment for substance misuse. ACT patients spent 31% more days in stable housing than those receiving usual care. ACT and usual services incurred $242 and $415 respectively in direct treatment costs per day of stable housing, an efficiency ratio of 0. 58 in favour of ACT. Patterns of care and costs varied according to race.ConclusionACT provides a cost-effective approach to reducing homelessness among persons with severe and persistent mental illnesses.


2020 ◽  
Vol 4 ◽  
Author(s):  
Deborah Toner ◽  
Clare Anderson ◽  
Shammane Joseph Jackson

This paper examines discussions among physicians, psychologists, public health officials, religious leaders and others who participated in the Caribbean Conferences on Mental Health between 1957 and 1969. Their discussions demonstrate major changes in the understanding of causes, definitions and appropriate treatments of mental health conditions, compared to the late nineteenth century, which saw a wave of major reforms to the management of mental illness in public asylums. Although major shifts in professional understandings of mental health were evident in the mid-twentieth century, the Caribbean Conferences on Mental Health reveal that the problems hindering the implementation of these new approaches were largely similar to those that Guyana and other Caribbean countries continue to face today.


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