1.

Record Nr.

UNINA9910878044603321

Autore

Finkelstein Joseph

Titolo

Artificial Intelligence in Medicine : 22nd International Conference, AIME 2024, Salt Lake City, UT, USA, July 9–12, 2024, Proceedings, Part I / / edited by Joseph Finkelstein, Robert Moskovitch, Enea Parimbelli

Pubbl/distr/stampa

Cham : , : Springer Nature Switzerland : , : Imprint : Springer, , 2024

ISBN

3-031-66538-4

Edizione

[1st ed. 2024.]

Descrizione fisica

1 online resource (438 pages)

Collana

Lecture Notes in Artificial Intelligence, , 2945-9141 ; ; 14844

Altri autori (Persone)

MoskovitchRobert

ParimbelliEnea

Disciplina

006.3

Soggetti

Artificial intelligence

Education - Data processing

Computer networks

Database management

Data mining

Application software

Artificial Intelligence

Computers and Education

Computer Communication Networks

Database Management

Data Mining and Knowledge Discovery

Computer and Information Systems Applications

Intel·ligència artificial en medicina

Congressos

Llibres electrònics

Lingua di pubblicazione

Inglese

Formato

Materiale a stampa

Livello bibliografico

Monografia

Nota di contenuto

-- Predictive modelling and disease risk prediction.  -- Applying Gaussian Mixture Model for clustering analysis of emergency room patients based on intubation status.  -- Bayesian Neural Network to predict antibiotic resistance.  -- Boosting multitask decomposition: directness, sequentiality, subsampling, cross-gradients.  -- Diagnostic



Modeling to Identify Unrecognized Inpatient Hypercapnia Using Health Record Data.  -- Enhancing Hypotension Prediction in Real-time Patient Monitoring Through Deep Learning: A Novel Application of XResNet with Contrastive Learning and Value Attention Mechanisms.  -- Evaluating the TMR model for multimorbidity decision support using a community-of-practice based methodology.  -- Frequent patterns of childhood overweight from longitudinal data on parental and early-life of infants health.  -- Fuzzy neural network model based on uni-nullneuron in extracting knowledge about risk factors of Maternal Health.  -- Identifying Factors Associated with COVID-19 All-Cause 90-Day Readmission: Machine Learning Approaches.  -- Mining Disease Progression Patterns for Advanced Disease Surveillance.  -- Minimizing Survey Questions for PTSD Prediction Following Acute Trauma.  -- Patient-Centric Approach for Utilising Machine Learning to Predict Health-Related Quality of Life Changes during Chemotherapy.  -- Predicting Blood Glucose Levels with LMU Recurrent Neural Networks: A Novel Computational Model.  -- Prediction Modelling and Data Quality Assessment for Nursing Scale in a big hospital: a proposal to save resources and improve data quality.  -- Process Mining for capacity planning and reconfiguration of a logistics system to enhance the intra-hospital patient transport. Case Study..  -- Radiotherapy Dose Optimization via Clinical Knowledge Based Reinforcement Learning.  -- Reinforcement Learning with Balanced Clinical Reward for Sepsis Treatment.  -- Secure and Private Vertical Federated Learning for Predicting Personalized CVA Outcomes.  -- Smoking Status Classification: A Comparative Analysis of Machine Learning Techniques with Clinical Real World Data.  -- The Impact of Data Augmentation on Time Series Classification Models: An In-Depth Study with Biomedical Data.  -- The Impact of Synthetic Data on Fall Detection Application.  -- Natural Language Processing.  -- A Retrieval-Augmented Generation Strategy To Enhance Medical Chatbot Reliability.  -- Beyond Self-Consistency: Ensemble Reasoning Boosts Consistency and Accuracy of LLMs in Cancer Staging.  -- Clinical Reasoning over Tabular Data and Text with Bayesian Networks.  -- Empowering Language Model with Guided Knowledge Fusion for Biomedical Document Re-ranking.  -- Enhancing Abstract Screening Classification in Evidence-Based Medicine: Incorporating domain knowledge into pre-trained models.  -- Exploring Pre-trained Language Models for Vocabulary Alignment in the UMLS.  -- ICU Bloodstream Infection Prediction: A Transformer-Based Approach for EHR Analysis.  -- Modeling multiple adverse pregnancy outcomes: Learning from diverse data sources.  -- OptimalMEE: Optimizing Large Language Models for Medical Event Extraction through Fine-tuning and Post-hoc Verification.  -- Self-Supervised Segment Contrastive Learning for Medical Document Representation 295.  -- Sentence-aligned Simplification of Biomedical Abstracts.  -- Sequence-Model-Based Medication Extraction from Clinical Narratives in German.  -- Social Media as a Sensor: Analyzing Twitter Data for Breast Cancer Medication Effects Using Natural Language Processing.  -- Bioinformatics and omics.  -- Breast cancer subtype prediction model integrating domain adaptation with semi-supervised learning on DNA methylation profiles.  -- CI-VAE for Single-Cell: Leveraging Generative-AI to Enhance Disease Understanding.  -- ProteinEngine: Empower LLM with Domain Knowledge for Protein Engineering.  -- Wearable devices, sensors, and robotics.  -- Advancements in Non-Invasive AI-Powered Glucose Monitoring: Leveraging Multispectral Imaging Across Diverse Wavelengths.  -- Anticipating Stress: Harnessing Biomarker Signals from a Wrist-worn Device for Early Prediction.  -- Improving Reminder Apps for Home



Voice Assistants.

Sommario/riassunto

This two-volume set LNAI 14844-14845 constitutes the refereed proceedings of the 22nd International Conference on Artificial Intelligence in Medicine, AIME 2024, held in Salt Lake City, UT, USA, during July 9-12, 2024. The 54 full papers and 22 short papers presented in the book were carefully reviewed and selected from 335 submissions. The papers are grouped in the following topical sections: Part I: Predictive modelling and disease risk prediction; natural language processing; bioinformatics and omics; and wearable devices, sensors, and robotics. Part II: Medical imaging analysis; data integration and multimodal analysis; and explainable AI.