Nicholas Miller


2020

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SemEval-2020 Task 6: Definition Extraction from Free Text with the DEFT Corpus
Sasha Spala | Nicholas Miller | Franck Dernoncourt | Carl Dockhorn
Proceedings of the Fourteenth Workshop on Semantic Evaluation

Research on definition extraction has been conducted for well over a decade, largely with significant constraints on the type of definitions considered. In this work, we present DeftEval, a SemEval shared task in which participants must extract definitions from free text using a term-definition pair corpus that reflects the complex reality of definitions in natural language. Definitions and glosses in free text often appear without explicit indicators, across sentences boundaries, or in an otherwise complex linguistic manner. DeftEval involved 3 distinct subtasks: 1) Sentence classification, 2) sequence labeling, and 3) relation extraction.

2019

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Assessing the Efficacy of Clinical Sentiment Analysis and Topic Extraction in Psychiatric Readmission Risk Prediction
Elena Alvarez-Mellado | Eben Holderness | Nicholas Miller | Fyonn Dhang | Philip Cawkwell | Kirsten Bolton | James Pustejovsky | Mei-Hua Hall
Proceedings of the Tenth International Workshop on Health Text Mining and Information Analysis (LOUHI 2019)

Predicting which patients are more likely to be readmitted to a hospital within 30 days after discharge is a valuable piece of information in clinical decision-making. Building a successful readmission risk classifier based on the content of Electronic Health Records (EHRs) has proved, however, to be a challenging task. Previously explored features include mainly structured information, such as sociodemographic data, comorbidity codes and physiological variables. In this paper we assess incorporating additional clinically interpretable NLP-based features such as topic extraction and clinical sentiment analysis to predict early readmission risk in psychiatry patients.

2018

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Analysis of Risk Factor Domains in Psychosis Patient Health Records
Eben Holderness | Nicholas Miller | Kirsten Bolton | Philip Cawkwell | Marie Meteer | James Pustejovsky | Mei Hua-Hall
Proceedings of the Ninth International Workshop on Health Text Mining and Information Analysis

Readmission after discharge from a hospital is disruptive and costly, regardless of the reason. However, it can be particularly problematic for psychiatric patients, so predicting which patients may be readmitted is critically important but also very difficult. Clinical narratives in psychiatric electronic health records (EHRs) span a wide range of topics and vocabulary; therefore, a psychiatric readmission prediction model must begin with a robust and interpretable topic extraction component. We created a data pipeline for using document vector similarity metrics to perform topic extraction on psychiatric EHR data in service of our long-term goal of creating a readmission risk classifier. We show initial results for our topic extraction model and identify additional features we will be incorporating in the future.