Clinical decision making is challenging because of pathological complexity, as well as large amounts of heterogeneous data generated as part of routine clinical care. In recent years, machine learning tools have been developed to aid this process. Intensive care unit (ICU) admissions represent the most data dense and time-critical patient care episodes. In this context, prediction models may help clinicians determine which patients are most at risk and prioritize care. However, flexible tools such as artificial neural networks (ANNs) suffer from a lack of interpretability limiting their acceptability to clinicians. In this work, we propose a novel interpretable Bayesian neural network architecture which offers both the flexibility of ANNs a...
This work presents a novel approach for the prediction of mortality in intensive care units (ICUs) b...
Intensive care units (ICUs) serve patients with life-threatening conditions. The limited ICU resourc...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Clinical decision making is challenging because of pathological complexity, as well as large amounts...
contemporaneous, formative computer analysis into the delivery and assessment of patient care, with ...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
Based on the results of previous studies, research on machine learning for predicting ICU patients i...
BACKGROUND: Pre-hospital circumstances, cardiac arrest characteristics, comorbidities and clinical s...
The rapid accurate diagnosis of critical disorders is an essential component of intensive care. Trad...
Background: Early outcome prediction of hospitalized patients is critical because the intensivists a...
BACKGROUND:Prognostication is an essential tool for risk adjustment and decision making in the inten...
This electronic version was submitted by the student author. The certified thesis is available in th...
Estimating the mortality of patients plays a fundamental role in an intensive care unit (ICU). Curre...
Background and objectives Changes in a patient's condition over time are a backbone of clinical deci...
Predicting clinical patients’ vital signs is a leading critical issue in intensive care units (ICUs)...
This work presents a novel approach for the prediction of mortality in intensive care units (ICUs) b...
Intensive care units (ICUs) serve patients with life-threatening conditions. The limited ICU resourc...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Clinical decision making is challenging because of pathological complexity, as well as large amounts...
contemporaneous, formative computer analysis into the delivery and assessment of patient care, with ...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
Based on the results of previous studies, research on machine learning for predicting ICU patients i...
BACKGROUND: Pre-hospital circumstances, cardiac arrest characteristics, comorbidities and clinical s...
The rapid accurate diagnosis of critical disorders is an essential component of intensive care. Trad...
Background: Early outcome prediction of hospitalized patients is critical because the intensivists a...
BACKGROUND:Prognostication is an essential tool for risk adjustment and decision making in the inten...
This electronic version was submitted by the student author. The certified thesis is available in th...
Estimating the mortality of patients plays a fundamental role in an intensive care unit (ICU). Curre...
Background and objectives Changes in a patient's condition over time are a backbone of clinical deci...
Predicting clinical patients’ vital signs is a leading critical issue in intensive care units (ICUs)...
This work presents a novel approach for the prediction of mortality in intensive care units (ICUs) b...
Intensive care units (ICUs) serve patients with life-threatening conditions. The limited ICU resourc...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...