State-of-the-art intracortical neuroprostheses currently enable communication at 60+ words per minute for anarthric individuals by training on over 10K sentences to account for phoneme variability in different word contexts. There is limited understanding about whether this performance can be maintained in decoding naturalistic speech with 40K+ word vocabularies across elicited, spontaneous, and conversational speech contexts. We introduce a vocal-unit-level generalization test to explicitly evaluate neural decoder performance with an expanded and more diverse behavioral repertoire. Tested on neural decoders modeling zebra finch vocalization, an analog to human vocal production, we compare three decoders with different input types: spike trains, neural factors, and firing rates. The factors and rates are latent neural features inferred using trained Latent Factor Analysis via Dynamical Systems (LFADS) models that capture the population neural dynamics during vocal production. While the conventional random holdout generalization error measure is similar for all three decoders, factor- and rate-based decoders outperform spike-based decoders when testing vocal-unit-holdout generalization error. These results suggest the later models better adapt to flexible vocalization inference when trained with partial observation of data variation, motivating further exploration of decoders incorporating latent neural and vocalization dynamics.
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http://dx.doi.org/10.1109/EMBC53108.2024.10782761 | DOI Listing |
Int J Pharm Pract
March 2025
Griffith University School of Pharmacy and Medical Science, 1 Parklands Drive, Southport, QLD 4215, Australia.
Objective: This study explored community pharmacists' experiences and perceptions of information transfer from Queensland health hospitals for patients during transitions of care and the current utilization of electronic medical records for accessing patient information.
Methods: Qualitative methodology was used involving in-depth semi-structured interviews with community pharmacists to explore their experiences and perceptions with information transfer during patients' transitions of care. Purposive sampling was used to ensure the participation of community pharmacists who had experience with the medication management of patients discharged from Queensland health hospitals.
Radiol Artif Intell
March 2025
Department of Radiology & Biomedical Imaging, University of California, San Francisco (UCSF), San Francisco, Calif.
Retrieval-augmented generation (RAG) is a strategy to improve performance of large language models (LLMs) by providing the LLM with an updated corpus of knowledge that can be used for answer generation in real-time. RAG may improve LLM performance and clinical applicability in radiology by providing citable, up-to-date information without requiring model fine-tuning. In this retrospective study, a radiology-specific RAG was developed using a vector database of 3,689 articles published from January 1999 to December 2023.
View Article and Find Full Text PDFRadiol Artif Intell
March 2025
Department of Radiology, Duke University Hospital, 2301 Erwin Rd, Durham, NC 27710.
Purpose To develop and evaluate an automated system for extracting structured clinical information from unstructured radiology and pathology reports using open-weights language models (LMs) and retrieval augmented generation (RAG) and to assess the effects of model configuration variables on extraction performance. Materials and Methods This retrospective study utilized two datasets: 7,294 radiology reports annotated for Brain Tumor Reporting and Data System (BT-RADS) scores and 2,154 pathology reports annotated for mutation status (January 2017 to July 2021). An automated pipeline was developed to benchmark the performance of various LMs and RAG configurations for structured data extraction accuracy from reports.
View Article and Find Full Text PDFRadiol Artif Intell
March 2025
Department of Medical Physics, BC Cancer-Kelowna, 399 Royal Ave, Kelowna, BC, Canada V1Y 5L3.
Purpose To test a commercial artificial intelligence (AI) system for breast cancer detection at the BC Cancer Breast Screening Program. Materials and Methods In this retrospective study of 136,700 women (age: µ = 58.8, σ = 9.
View Article and Find Full Text PDFBioelectromagnetics
April 2025
Care & Cure Lab of the Electromagnetics Group (EM4Care+Cure), Department of Electrical Engineering, Eindhoven University of Technology, Eindhoven, The Netherlands.
Neuromodulation with low-intensity focused ultrasound (LIFUS) holds significant promise for noninvasive treatment of neurological disorders, but its success relies heavily on accurately targeting specific brain regions. Computational model predictions can be used to optimize LIFUS, but uncertain acoustic tissue properties can affect prediction accuracy. The Monte Carlo method is often used to quantify the impact of uncertainties, but many iterations are generally needed for accurate estimates.
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