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Open AccessJournal ArticleDOI

Predicting mortality in critically ill patients with diabetes using machine learning and clinical notes.

TLDR
In this article, a secondary analysis of Medical Information Mart for Intensive Care III (MIMIC-III) data was conducted to predict the risk of mortality of critically ill patients.
Abstract
Diabetes mellitus is a prevalent metabolic disease characterized by chronic hyperglycemia. The avalanche of healthcare data is accelerating precision and personalized medicine. Artificial intelligence and algorithm-based approaches are becoming more and more vital to support clinical decision-making. These methods are able to augment health care providers by taking away some of their routine work and enabling them to focus on critical issues. However, few studies have used predictive modeling to uncover associations between comorbidities in ICU patients and diabetes. This study aimed to use Unified Medical Language System (UMLS) resources, involving machine learning and natural language processing (NLP) approaches to predict the risk of mortality. We conducted a secondary analysis of Medical Information Mart for Intensive Care III (MIMIC-III) data. Different machine learning modeling and NLP approaches were applied. Domain knowledge in health care is built on the dictionaries created by experts who defined the clinical terminologies such as medications or clinical symptoms. This knowledge is valuable to identify information from text notes that assert a certain disease. Knowledge-guided models can automatically extract knowledge from clinical notes or biomedical literature that contains conceptual entities and relationships among these various concepts. Mortality classification was based on the combination of knowledge-guided features and rules. UMLS entity embedding and convolutional neural network (CNN) with word embeddings were applied. Concept Unique Identifiers (CUIs) with entity embeddings were utilized to build clinical text representations. The best configuration of the employed machine learning models yielded a competitive AUC of 0.97. Machine learning models along with NLP of clinical notes are promising to assist health care providers to predict the risk of mortality of critically ill patients. UMLS resources and clinical notes are powerful and important tools to predict mortality in diabetic patients in the critical care setting. The knowledge-guided CNN model is effective (AUC = 0.97) for learning hidden features.

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The impact of electronic health record–integrated patient-generated health data on clinician burnout

TL;DR: In this paper, the authors investigate how interactions with EHR-integrated patient-generated health data (PGHD) may result in clinician burnout and identify the potential contributing factors to clinicians burnout using a modified FITT (Fit between individuals, task and technology) framework.
Journal ArticleDOI

Unstructured clinical notes within the 24 hours since admission predict short, mid & long-term mortality in adult ICU patients

TL;DR: This work proposes a framework to predict short, mid, and long-term mortality in adult ICU patients using unstructured clinical notes from the MIMIC III database, natural language processing (NLP), and machine learning (ML) models, and provides an interpretation of the NLP-based predictive models using feature-importance scores.
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A comparative study on deep learning models for text classification of unstructured medical notes with various levels of class imbalance

TL;DR: In this article , the authors explored the model performance of various deep learning algorithms in text classification tasks on medical notes with respect to different disease class imbalance scenarios, and concluded that Transformer encoder is the best choice if the computation resource is not an issue.
Journal ArticleDOI

Advancing Mental Health and Psychological Support for Health Care Workers Using Digital Technologies and Platforms.

TL;DR: The proposed MEET framework enabled a better understanding of how to mitigate the psychological effects during the pandemic, recover from associated experiences, and provide comprehensive institutional and societal infrastructures for the well-being of health care workers.
Journal ArticleDOI

Clinical notes as prognostic markers of mortality associated with diabetes mellitus following critical care: A retrospective cohort analysis using machine learning and unstructured big data.

TL;DR: In this paper, the predictive value of clinical notes as prognostic markers of 1-year all-cause mortality among people with diabetes following critical care was determined using three cohorts of clinical text in a critical care database.
References
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Journal ArticleDOI

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Journal ArticleDOI

The Unified Medical Language System (UMLS): integrating biomedical terminology

TL;DR: The Unified Medical Language System is a repository of biomedical vocabularies developed by the US National Library of Medicine and includes tools for customizing the Metathesaurus (MetamorphoSys), for generating lexical variants of concept names (lvg) and for extracting UMLS concepts from text (MetaMap).
Journal ArticleDOI

Exploratory Undersampling for Class-Imbalance Learning

TL;DR: Experiments show that the proposed algorithms, BalanceCascade and EasyEnsemble, have better AUC scores than many existing class-imbalance learning methods and have approximately the same training time as that of under-sampling, which trains significantly faster than other methods.
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