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Foundation models for generalist medical artificial intelligence
The exceptionally rapid development of highly flexible, reusable artificial intelligence (AI)
models is likely to usher in newfound capabilities in medicine. We propose a new paradigm …
models is likely to usher in newfound capabilities in medicine. We propose a new paradigm …
Algorithmic fairness in artificial intelligence for medicine and healthcare
In healthcare, the development and deployment of insufficiently fair systems of artificial
intelligence (AI) can undermine the delivery of equitable care. Assessments of AI models …
intelligence (AI) can undermine the delivery of equitable care. Assessments of AI models …
Data drift in medical machine learning: implications and potential remedies
Data drift refers to differences between the data used in training a machine learning (ML)
model and that applied to the model in real-world operation. Medical ML systems can be …
model and that applied to the model in real-world operation. Medical ML systems can be …
Machine learning in precision diabetes care and cardiovascular risk prediction
Artificial intelligence and machine learning are driving a paradigm shift in medicine,
promising data-driven, personalized solutions for managing diabetes and the excess …
promising data-driven, personalized solutions for managing diabetes and the excess …
Targeted validation: validating clinical prediction models in their intended population and setting
Clinical prediction models must be appropriately validated before they can be used. While
validation studies are sometimes carefully designed to match an intended population/setting …
validation studies are sometimes carefully designed to match an intended population/setting …
EHR foundation models improve robustness in the presence of temporal distribution shift
Temporal distribution shift negatively impacts the performance of clinical prediction models
over time. Pretraining foundation models using self-supervised learning on electronic health …
over time. Pretraining foundation models using self-supervised learning on electronic health …
Algorithm fairness in ai for medicine and healthcare
In the current development and deployment of many artificial intelligence (AI) systems in
healthcare, algorithm fairness is a challenging problem in delivering equitable care. Recent …
healthcare, algorithm fairness is a challenging problem in delivering equitable care. Recent …
[HTML][HTML] Why did AI get this one wrong?—Tree-based explanations of machine learning model predictions
Increasingly complex learning methods such as boosting, bagging and deep learning have
made ML models more accurate, but harder to interpret and explain, culminating in black …
made ML models more accurate, but harder to interpret and explain, culminating in black …
Evaluation of domain generalization and adaptation on improving model robustness to temporal dataset shift in clinical medicine
Temporal dataset shift associated with changes in healthcare over time is a barrier to
deploying machine learning-based clinical decision support systems. Algorithms that learn …
deploying machine learning-based clinical decision support systems. Algorithms that learn …
[HTML][HTML] Comparative analysis of the clustering quality in self-organizing maps for human posture classification
LE Ekemeyong Awong, T Zielinska - Sensors, 2023 - mdpi.com
The objective of this article is to develop a methodology for selecting the appropriate number
of clusters to group and identify human postures using neural networks with unsupervised …
of clusters to group and identify human postures using neural networks with unsupervised …