Experimental datasets in bioengineering are commonly limited in size, thus rendering Machine Learning (ML) impractical for predictive modelling. Novel techniques of multiple runs for model development and surrogate data analysis for model validation are suggested for prediction of biomedical outcomes based on small datasets for classification and regression tasks. The proposed framework was applied to designing a Neural Network model for osteoarthritic bone fracture risk stratification, and a Decision Tree model for prediction of antibody-mediated kidney transplant rejection. Despite the small datasets (35 bone specimens and 80 kidney transplants), the two models achieved high accuracy of 98.3% and 85%, respectively
The complexity of transplant medicine pushes the boundaries of innate, human reasoning. From network...
Background: As more and more researchers are turning to big data for new opportunities of biomedical...
Predicting clinical outcome following a specific treatment is a challenge that sees physicians and r...
Machine learning (ML) is an artificial intelligence (AI) technique that facilitates the improvement ...
Clinical datasets are commonly limited in size, thus restraining applications of Machine Learning (M...
Identifying patients with high risk of hip fracture is a great challenge in osteoporosis clinical as...
The medical field produces large quantities of multidimensional, complex, and often unstructured dat...
There have been many recent advances in machine learning, resulting in models which have had major i...
Clinical datasets are commonly limited in size, thus restraining applications of Machine Learning (M...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...
Kidney transplant recipients and transplant physicians face important clinical questions where machi...
Background and purpose — Advancements in software and hardware have enabled the rise of clinical pre...
The need for bioinformatic methods is increasing due to the need to extract conclusions from high-th...
Artificial Intelligence is providing astonishing results, with medicine being one of its fa-vourite ...
Machine learning (ML) is a powerful and flexible tool that can be used to analyze and predict outcom...
The complexity of transplant medicine pushes the boundaries of innate, human reasoning. From network...
Background: As more and more researchers are turning to big data for new opportunities of biomedical...
Predicting clinical outcome following a specific treatment is a challenge that sees physicians and r...
Machine learning (ML) is an artificial intelligence (AI) technique that facilitates the improvement ...
Clinical datasets are commonly limited in size, thus restraining applications of Machine Learning (M...
Identifying patients with high risk of hip fracture is a great challenge in osteoporosis clinical as...
The medical field produces large quantities of multidimensional, complex, and often unstructured dat...
There have been many recent advances in machine learning, resulting in models which have had major i...
Clinical datasets are commonly limited in size, thus restraining applications of Machine Learning (M...
Introduction: Machine learning has been increasingly used to develop predictive models to diagnose d...
Kidney transplant recipients and transplant physicians face important clinical questions where machi...
Background and purpose — Advancements in software and hardware have enabled the rise of clinical pre...
The need for bioinformatic methods is increasing due to the need to extract conclusions from high-th...
Artificial Intelligence is providing astonishing results, with medicine being one of its fa-vourite ...
Machine learning (ML) is a powerful and flexible tool that can be used to analyze and predict outcom...
The complexity of transplant medicine pushes the boundaries of innate, human reasoning. From network...
Background: As more and more researchers are turning to big data for new opportunities of biomedical...
Predicting clinical outcome following a specific treatment is a challenge that sees physicians and r...