Surveying neuro-symbolic approaches for reliable artificial intelligence of things

Z Lu, I Afridi, HJ Kang, I Ruchkin, X Zheng - Journal of Reliable Intelligent …, 2024‏ - Springer
Abstract The integration of Artificial Intelligence (AI) with the Internet of Things (IoT), known
as the Artificial Intelligence of Things (AIoT), enhances the devices' processing and analysis …

Using machine learning methods to predict all-cause somatic hospitalizations in adults: A systematic review

M Askar, M Tafavvoghi, L Småbrekke, LA Bongo… - Plos one, 2024‏ - journals.plos.org
Aim In this review, we investigated how Machine Learning (ML) was utilized to predict all-
cause somatic hospital admissions and readmissions in adults. Methods We searched eight …

[HTML][HTML] Enhancing health equity by predicting missed appointments in health care: machine learning study

Y Yang, S Madanian, D Parry - JMIR medical informatics, 2024‏ - medinform.jmir.org
Background: The phenomenon of patients missing booked appointments without canceling
them—known as Did Not Show (DNS), Did Not Attend (DNA), or Failed To Attend (FTA) …

MAIPFE: An Efficient Multimodal Approach Integrating Pre-Emptive Analysis, Personalized Feature Selection, and Explainable AI.

MD Sirapangi, S Gopikrishnan - Computers, Materials & …, 2024‏ - search.ebscohost.com
Abstract Medical Internet of Things (IoT) devices are becoming more and more common in
healthcare. This has created a huge need for advanced predictive health modeling …

Improved healthcare access in low-resource regions: A review of technological solutions

B Lamichhane, N Neupane - arxiv preprint arxiv:2205.10913, 2022‏ - arxiv.org
Technological advancements have led to significant improvements in healthcare for
prevention, diagnosis, treatments, and care. While resourceful regions can capitalize on …

Analysis and Mortality Prediction using Multiclass Classification for Older Adults with Type 2 Diabetes

R Desure, GJ Krishna - arxiv preprint arxiv:2402.10999, 2024‏ - arxiv.org
Designing proper treatment plans to manage diabetes requires health practitioners to pay
heed to the individuals remaining life along with the comorbidities affecting them. Older …

Machine Learning-Based Prediction of ICU Readmissions in Intracerebral Hemorrhage Patients: Insights from the MIMIC Databases

S Chen, J Fan, A Abdollahi, N Ashrafi, K Alaei… - medRxiv, 2025‏ - medrxiv.org
Background: Intracerebral hemorrhage (ICH) is a life-risking condition characterized by
bleeding within the brain parenchyma. ICU readmission in ICH patients is a critical outcome …

Interpretable and robust hospital readmission predictions from electronic health records

H Calero-Díaz, RA Hamad, C Atallah… - … Conference on Big …, 2023‏ - ieeexplore.ieee.org
Rates of Hospital Readmission (HR), defined as unplanned readmission within 30 days of
discharge, have been increasing over the years, and impose an economic burden on …

Evaluation of patient discharge information between what is said and what is written

S Tailakh, MM Ahmad - Asia Pacific Journal of Health …, 2023‏ - search.informit.org
BACKGROUND: A patient's discharge from the hospital is considered a crucial transition.
Appropriate patient education about their condition and its treatment can reduce adverse …

Risk Prediction of Opioid Dependency Using Machine Learning Based on Electronic Health Record

S Madanian, S Dai, P Natarajan… - 2023 IEEE Asia …, 2023‏ - ieeexplore.ieee.org
Opioid abuse and dependence have emerged as a pressing global concern, posing
significant challenges to public health and society. Early identification and prediction of …