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Retrieval augmented large language model system for comprehensive drug contraindications
Retrieval augmented large language model system for comprehensive drug contraindications
The versatility of large language models (LLMs) has been explored across various sectors, but their application in healthc...
Inter-clinician diagnostic agreement of shock etiology: a multicenter observational study
Inter-clinician diagnostic agreement of shock etiology: a multicenter observational study
We sought to (1) quantify lack of inter-clinician diagnostic agreement of shock etiology and (2) predict patients without ...
Protein–protein interaction extraction enhanced by entity semantic representation
Protein–protein interaction extraction enhanced by entity semantic representation
Aiming to address key challenges in biomedical text mining, this paper proposes a protein–protein interaction (PPI) ...
HeteroMed: a heterogeneous graph knowledge-enhanced model for medication recommendation
HeteroMed: a heterogeneous graph knowledge-enhanced model for medication recommendation
Medication recommendation aims to generate treatment regimens that balance efficacy and safety based on patients’ hi...
Consistent explainable image quality assessment for medical imaging
Consistent explainable image quality assessment for medical imaging
Medical image quality assessment is crucial, as poor-quality images can lead to misdiagnosis. Manual quality labeling is t...
Large language models and conditional rules in clinical decision support systems
Large language models and conditional rules in clinical decision support systems
Clinical Decision Support Systems (CDSS) improve patient outcomes and support sustainable health services by enhancing med...
Machine learning models for volume and weight estimation in breast reconstruction planning
Machine learning models for volume and weight estimation in breast reconstruction planning
Accurate estimation of breast volume and weight is critical for post-mastectomy reconstruction. Existing methods are frequ...
Optimizing ED patient disposition predictions through clinical narratives with advanced pre-trained language models
Optimizing ED patient disposition predictions through clinical narratives with advanced pre-trained language models
Timely identification of febrile patients requiring hospitalization remains a significant challenge in Emergency Departmen...
Exploring the potential of large language models in healthcare: a focus on cardiovascular disease analysis
Exploring the potential of large language models in healthcare: a focus on cardiovascular disease analysis
With the rapid development of big data and artificial intelligence technologies, large language models (LLMs) are increasi...
Pose2met: a unified spatiotemporal framework for 3D human pose estimation and energy expenditure estimation
Pose2met: a unified spatiotemporal framework for 3D human pose estimation and energy expenditure estimation
This study addresses key challenges in 3D human pose estimation (HPE) and energy expenditure estimation (EEE), focusing on...
A data fusion deep learning approach for accurate organelle-based classification of cancer cells
A data fusion deep learning approach for accurate organelle-based classification of cancer cells
Microscopy-based cancer cell classification traditionally relies on cell-based morphological features, while subcellular o...
Big data in healthcare and medicine revisited: design and managerial challenges in the age of artificial intelligence
Big data in healthcare and medicine revisited: design and managerial challenges in the age of artificial intelligence
A decade ago, we characterized big data in healthcare as a nascent field anchored in distributed computing paradigms. The ...
MedGAITS: a graph autoencoder network for modeling irregular time series data in electronic medical records
MedGAITS: a graph autoencoder network for modeling irregular time series data in electronic medical records
The widespread adoption of electronic medical records (EMR) has facilitated the prediction of patient prognosis and diseas...
An enhanced heart disease prediction model based on linear Diophantine fuzzy-integrated supervised machine learning
An enhanced heart disease prediction model based on linear Diophantine fuzzy-integrated supervised machine learning
The medical diagnosis often dealt with uncertainty and vagueness that hindered the effectiveness of conventional ML approa...
An augmented ECG data based classification for arrhythmia using optimal feature set
An augmented ECG data based classification for arrhythmia using optimal feature set
The Electrocardiogram (ECG) is a pivotal tool for diagnosing heart conditions such as arrhythmia. Prompt detection of arrh...
MSER: an emotion recognition method based on multi-signal information fusion
MSER: an emotion recognition method based on multi-signal information fusion
Emotion recognition usually refers to the identification of people’s emotional states through facial expressions, be...
CSL-CTEA: a systematic method for evaluating novel intelligent cognitive assessment tools
CSL-CTEA: a systematic method for evaluating novel intelligent cognitive assessment tools
With the intensification of global population aging, the incidence of cognitive disorders such as dementia continues to ri...
Optimized seizure detection leveraging band-specific insights from limited EEG channels
Optimized seizure detection leveraging band-specific insights from limited EEG channels
Effective seizure detection systems are crucial for health information systems and managing epilepsy, yet traditional mult...
GEP-DNN4Mol: automatic chemical molecular design based on deep neural networks and gene expression programming
GEP-DNN4Mol: automatic chemical molecular design based on deep neural networks and gene expression programming
The inverse design of molecules has attracted widespread attention in the field of chemical molecular design. However, exi...
Spatial and frequency domain-based feature fusion for accurate detection of schizophrenia using AI-driven approaches
Spatial and frequency domain-based feature fusion for accurate detection of schizophrenia using AI-driven approaches
Schizophrenia is a neuropsychiatric disorder that hampers brain functions and causes hallucinations, delusions, and bizarr...
Multimodal interpretable data-driven models for early prediction of multidrug resistance using multivariate time series
Multimodal interpretable data-driven models for early prediction of multidrug resistance using multivariate time series
Electronic Health Records (EHRs) serve as a comprehensive repository of multimodal patient health data, combining static d...
Cerebral ischemia detection using deep learning techniques
Cerebral ischemia detection using deep learning techniques
Cerebrovascular accident (CVA), commonly known as stroke, stands as a significant contributor to contemporary mortality an...
Multi-teacher based knowledge distillation for retinal vessel segmentation
Multi-teacher based knowledge distillation for retinal vessel segmentation
Accurate segmentation of retinal vessels is crucial for the early diagnosis and management of various ocular diseases. Exi...