Machine Learning Programs Predict Mortality Risk by Analyzing Results from Routine Hospital Tests
|
By HospiMedica International staff writers Posted on 22 Mar 2023 |

Individuals having high blood pressure or symptoms of heart disease, such as chest pain, shortness of breath or an irregular heartbeat generally visit a hospital or an emergency department. In such cases, a clinician usually orders an electrocardiogram, or ECG - a standard test in which tiny electrodes are taped to the chest for checking the heart’s rhythm and electrical activity. Hospital ECGs are mostly read by a doctor or nurse at the patient’s bedside, but now researchers are applying artificial intelligence (AI) to gather additional information from those results to improve patients care.
A research team at University of Alberta (Edmonton, Alberta, Canada) has developed and trained machine learning programs using a massive dataset of 1.6 million ECGs performed on 244,077 patients spanning over a period from 2007 till 2020. The algorithm predicted the risk of death from all causes within one month, one year, and five years with an impressive 85% accuracy rate, ranking the patients into one of five categories, ranging from the lowest to the highest risk. The algorithm's precision was substantially enhanced when demographic information such as age and sex, along with the results of six standard laboratory blood tests (creatinine, kidney function, sodium, troponin, hemoglobin, and potassium) were incorporated into the analysis.
This study serves as a proof-of-concept for utilizing routinely collected data to enhance individual care, enabling the healthcare system to “learn” on the go. The initial phase of the study examined ECG results of all the patients. However, the research team aims to refine these predictive models to cater to specific subgroups of patients. In the subsequent phases, the study will also focus on forecasting heart-related causes of death. The researchers highlight the immense advantage of employing high-powered computing as it can simultaneously view the patterns in a multitude of data points.
“These findings illustrate how machine learning models can be employed to convert data collected routinely in clinical practice to knowledge that can be used to augment decision-making at the point of care as part of a learning health-care system,” the researchers concluded in the study.
Related Links:
University of Alberta
Latest AI News
- AI Analysis of Pericardial Fat Refines Long-Term Heart Disease Risk
- Machine Learning Approach Enhances Liver Cancer Risk Stratification
- New AI Approach Monitors Brain Health Using Passive Wearable Data
- AI Tool Maps Early Risk Patterns in Bloodstream Infections
- AI Model Identifies Rare Endocrine Disorder from Hand Images
- AI Tool Promises to Reduce Length of Hospital Stays and Free Up Beds
- Machine Learning Model Cuts Canceled Liver Transplants By 60%
Channels
Critical Care
view channel
Noninvasive Monitoring Device Enables Earlier Intervention in Heart Failure
Hospitalizations for heart failure with preserved ejection fraction (HFpEF) remain common because lung congestion often worsens before symptoms prompt treatment changes. Missed early decompensation... Read more
Automated IV Labeling Solution Improves Infusion Safety and Efficiency
Medication administration in high-acuity settings is often complicated by multiple concurrent infusions, making accurate line identification essential. In a 10-hospital intensive care unit study, 60% of... Read moreSurgical Techniques
view channel
Ultrasound Technology Aims to Replace Invasive BPH Procedures
Benign prostatic hyperplasia (BPH) is a frequent cause of lower urinary tract symptoms in aging men and often requires invasive procedures or prolonged recovery. With prevalence expected to rise as populations... Read more
Continuous Monitoring with Wearables Enhances Postoperative Patient Safety
Postoperative hypoxemia on general surgical wards is common and often missed by intermittent vital sign checks. Undetected low oxygen levels can delay recovery and raise the risk of complications that... Read morePatient Care
view channel
Wearable Sleep Data Predict Adherence to Pulmonary Rehabilitation
Chronic obstructive pulmonary disease (COPD) is a long-term lung disorder that makes breathing difficult and often disturbs sleep, reducing energy for daily activities. Limited engagement in pulmonary... Read more
Revolutionary Automatic IV-Line Flushing Device to Enhance Infusion Care
More than 80% of in-hospital patients receive intravenous (IV) therapy. Every dose of IV medicine delivered in a small volume (<250 mL) infusion bag should be followed by subsequent flushing to ensure... Read moreHealth IT
view channel
EMR-Based Tool Predicts Graft Failure After Kidney Transplant
Kidney transplantation offers patients with end-stage kidney disease longer survival and better quality of life than dialysis, yet graft failure remains a major challenge. Although a successful transplant... Read more
Printable Molecule-Selective Nanoparticles Enable Mass Production of Wearable Biosensors
The future of medicine is likely to focus on the personalization of healthcare—understanding exactly what an individual requires and delivering the appropriate combination of nutrients, metabolites, and... Read moreBusiness
view channel







