Literature DB >> 33431794

Hard for humans, hard for machines: predicting readmission after psychiatric hospitalization using narrative notes.

William Boag1, Olga Kovaleva2, Thomas H McCoy3, Anna Rumshisky4, Peter Szolovits1, Roy H Perlis5.   

Abstract

Machine learning has been suggested as a means of identifying individuals at greatest risk for hospital readmission, including psychiatric readmission. We sought to compare the performance of predictive models that use interpretable representations derived via topic modeling to the performance of human experts and nonexperts. We examined all 5076 admissions to a general psychiatry inpatient unit between 2009 and 2016 using electronic health records. We developed multiple models to predict 180-day readmission for these admissions based on features derived from narrative discharge summaries, augmented by baseline sociodemographic and clinical features. We developed models using a training set comprising 70% of the cohort and evaluated on the remaining 30%. Baseline models using demographic features for prediction achieved an area under the curve (AUC) of 0.675 [95% CI 0.674-0.676] on an independent testing set, while language-based models also incorporating bag-of-words features, discharge summaries topics identified by Latent Dirichlet allocation (LDA), and prior psychiatric admissions achieved AUC of 0.726 [95% CI 0.725-0.727]. To characterize the difficulty of the task, we also compared the performance of these classifiers to both expert and nonexpert human raters, with and without feedback, on a subset of 75 test cases. These models outperformed humans on average, including predictions by experienced psychiatrists. Typical note tokens or topics associated with readmission risk were related to pregnancy/postpartum state, family relationships, and psychosis.

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Mesh:

Year:  2021        PMID: 33431794      PMCID: PMC7801508          DOI: 10.1038/s41398-020-01104-w

Source DB:  PubMed          Journal:  Transl Psychiatry        ISSN: 2158-3188            Impact factor:   6.222


  10 in total

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5.  Validation of a combined comorbidity index.

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8.  Improving Prediction of Suicide and Accidental Death After Discharge From General Hospitals With Natural Language Processing.

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  10 in total
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  3 in total

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