keyword
https://read.qxmd.com/read/38657229/factor-analysis-of-patients-who-find-tablets-or-capsules-difficult-to-swallow-due-to-their-large-size-using-the-personal-health-record-infrastructure-of-electronic-medication-notebooks
#1
JOURNAL ARTICLE
Masaki Asano, Shungo Imai, Yuri Shimizu, Hayato Kizaki, Yukiko Ito, Makoto Tsuchiya, Ryoko Kuriyama, Nao Yoshida, Masanori Shimada, Takanori Sando, Tomo Ishijima, Satoko Hori
BACKGROUND: Understanding patient preference regarding taking tablet or capsule formulations plays a pivotal role in treatment efficacy and adherence. Therefore, these preferences should be taken into account when designing formulations and prescriptions. OBJECTIVE: This study investigates the factors affecting patient preference in patients who have difficulties swallowing large tablets or capsules and aims to identify appropriate sizes for tablets and capsules...
April 24, 2024: Journal of Medical Internet Research
https://read.qxmd.com/read/38657194/patient-and-caregiver-perceptions-of-an-interface-design-to-communicate-artificial-intelligence-based-prognosis-for-patients-with-advanced-solid-tumors
#2
JOURNAL ARTICLE
Elizabeth A Sloss, Jordan P McPherson, Anna C Beck, Jia-Wen Guo, Carolyn H Scheese, Naomi R Flake, George Chalkidis, Catherine J Staes
PURPOSE: Use of artificial intelligence (AI) in cancer care is increasing. What remains unclear is how best to design patient-facing systems that communicate AI output. With oncologist input, we designed an interface that presents patient-specific, machine learning-based 6-month survival prognosis information designed to aid oncology providers in preparing for and discussing prognosis with patients with advanced solid tumors and their caregivers. The primary purpose of this study was to assess patient and caregiver perceptions and identify enhancements of the interface for communicating 6-month survival and other prognosis information when making treatment decisions concerning anticancer and supportive therapy...
April 2024: JCO Clinical Cancer Informatics
https://read.qxmd.com/read/38657165/time-dependent-and-coating-modulation-of-tomato-response-upon-sulfur-nanoparticle-internalization-and-assimilation-an-orthogonal-mechanistic-investigation
#3
JOURNAL ARTICLE
Yi Wang, Chaoyi Deng, Lijuan Zhao, Christian O Dimkpa, Wade H Elmer, Bofei Wang, Sudhir Sharma, Zhenyu Wang, Om Parkash Dhankher, Baoshan Xing, Jason C White
Nanoenabled strategies have recently attracted attention as a sustainable platform for agricultural applications. Here, we present a mechanistic understanding of nanobiointeraction through an orthogonal investigation. Pristine (nS) and stearic acid surface-modified (cS) sulfur nanoparticles (NPs) as a multifunctional nanofertilizer were applied to tomato ( Solanum lycopersicum L.) through soil. Both nS and cS increased root mass by 73% and 81% and increased shoot weight by 35% and 50%, respectively, compared to the untreated controls...
April 24, 2024: ACS Nano
https://read.qxmd.com/read/38657158/empirically-derived-symptom-profiles-in-adults-with-attention-deficit-hyperactivity-disorder-an-unsupervised-machine-learning-approach
#4
JOURNAL ARTICLE
Violeta J Rodriguez, John-Christopher A Finley, Qimin Liu, Demy Alfonso, Karen S Basurto, Alison Oh, Amanda Nili, Katherine C Paltell, Jennifer K Hoots, Gabriel P Ovsiew, Zachary J Resch, Devin M Ulrich, Jason R Soble
BACKGROUND: Attention-deficit/hyperactivity disorder (ADHD) is associated with various cognitive, behavioral, and mood symptoms that complicate diagnosis and treatment. The heterogeneity of these symptoms may also vary depending on certain sociodemographic factors. It is therefore important to establish more homogenous symptom profiles in patients with ADHD and determine their association with the patient's sociodemographic makeup. The current study used unsupervised machine learning to identify symptom profiles across various cognitive, behavioral, and mood symptoms in adults with ADHD...
April 24, 2024: Applied Neuropsychology. Adult
https://read.qxmd.com/read/38656888/integrated-multi-omics-analysis-and-machine-learning-identify-hub-genes-and-potential-mechanisms-of-resistance-to-immunotherapy-in-gastric-cancer
#5
JOURNAL ARTICLE
Jinsong Wang, Jia Feng, Xinyi Chen, Yiming Weng, Tong Wang, Jiayan Wei, Yujie Zhan, Min Peng
BACKGROUND: Patients with gastric cancer respond poorly to immunotherapy. There are still unknowns about the biomarkers associated with immunotherapy sensitivity and their underlying molecular mechanisms. METHODS: Gene expression data for gastric cancer were gathered from TCGA and GEO databases. DEGs associated with immunotherapy response came from ICBatlas. KEGG and GO analyses investigated pathways. Hub genes identification employed multiple machine algorithms...
April 22, 2024: Aging
https://read.qxmd.com/read/38656859/what-makes-deviant-places
#6
JOURNAL ARTICLE
Jin-Hwi Park, Young-Jae Park, Ilyung Cheong, Junoh Lee, Young Eun Huh, Hae-Gon Jeon
Urban safety plays an essential role in the quality of citizens' lives and in the sustainable development of cities. In recent years, researchers have attempted to apply machine learning techniques to identify the role of location-specific attributes in the development of urban safety. However, existing studies have mainly relied on limited images (e.g., map images, single- or four-directional images) of areas based on a relatively large geographical unit and have narrowly focused on severe crime rates, which limits their predictive performance and implications for urban safety...
April 24, 2024: IEEE Transactions on Pattern Analysis and Machine Intelligence
https://read.qxmd.com/read/38656858/novel-uncertainty-quantification-through-perturbation-assisted-sample-synthesis
#7
JOURNAL ARTICLE
Yifei Liu, Rex Shen, Xiaotong Shen
This paper introduces a novel Perturbation-Assisted Inference (PAI) framework utilizing synthetic data generated by the Perturbation-Assisted Sample Synthesis (PASS) method. The framework focuses on uncertainty quantification in complex data scenarios, particularly involving unstructured data while utilizing deep learning models. On one hand, PASS employs a generative model to create synthetic data that closely mirrors raw data while preserving its rank properties through data perturbation, thereby enhancing data diversity and bolstering privacy...
April 24, 2024: IEEE Transactions on Pattern Analysis and Machine Intelligence
https://read.qxmd.com/read/38656857/learning-graph-attentions-via-replicator-dynamics
#8
JOURNAL ARTICLE
Bo Jiang, Ziyan Zhang, Sheng Ge, Beibei Wang, Xiao Wang, Jin Tang
Graph Attention (GA) which aims to learn the attention coefficients for graph edges has achieved impressive performance in GNNs on many graph learning tasks. However, existing GAs are usually learned based on edges' (or connected nodes') features which fail to fully capture the rich structural information of edges. Some recent research attempts to incorporate the structural information into GA learning but how to fully exploit them in GA learning is still a challenging problem. To address this challenge, in this work, we propose to leverage a new Replicator Dynamics model for graph attention learning, termed Graph Replicator Attention (GRA)...
April 24, 2024: IEEE Transactions on Pattern Analysis and Machine Intelligence
https://read.qxmd.com/read/38656855/neuralrecon-real-time-coherent-3d-scene-reconstruction-from-monocular-video
#9
JOURNAL ARTICLE
Xi Chen, Jiaming Sun, Yiming Xie, Hujun Bao, Xiaowei Zhou
We present a novel framework named NeuralRecon for real-time 3D scene reconstruction from a monocular video. Unlike previous methods that estimate single-view depth maps separately on each key-frame and fuse them later, we propose to directly reconstruct local surfaces represented as sparse TSDF volumes for each video fragment sequentially by a neural network. A learning-based TSDF fusion module based on gated recurrent units is used to guide the network to fuse features from previous fragments. This design allows the network to capture local smoothness prior and global shape prior of 3D surfaces when sequentially reconstructing the surfaces, resulting in accurate, coherent, and real-time surface reconstruction...
April 24, 2024: IEEE Transactions on Pattern Analysis and Machine Intelligence
https://read.qxmd.com/read/38656850/stimulus-response-patterns-the-key-to-giving-generalizability-to-text-based-depression-detection-models
#10
JOURNAL ARTICLE
Zhenyu Liu, Yang Wu, Haibo Zhang, Gang Li, Zhijie Ding, Bin Hu
Text content analysis for depression detection using machine learning techniques has become a prominent area of research. However, previous studies focused mainly on analyzing the textual content, neglecting the fundamental factors driving text generation. Consequently, existing models face the challenge of poor generalization to out-of-domain data as they struggle to capture the crucial features of depression. To address this, we propose a novel computational perspective of "stimulus-response patterns" that brings us closer to the essence of clinical diagnosis of depression...
April 24, 2024: IEEE Journal of Biomedical and Health Informatics
https://read.qxmd.com/read/38656769/a-machine-learning-model-for-identifying-sexual-health-influencers-to-promote-the-secondary-distribution-of-hiv-self-testing-among-gay-bisexual-and-other-men-who-have-sex-with-men-in-china-quasi-experimental-study
#11
JOURNAL ARTICLE
Yuxin Ni, Ying Lu, Fengshi Jing, Qianyun Wang, Yewei Xie, Xi He, Dan Wu, Rayner Kay Jin Tan, Joseph D Tucker, Xumeng Yan, Jason J Ong, Qingpeng Zhang, Hongbo Jiang, Wencan Dai, Liqun Huang, Wenhua Mei, Yi Zhou, Weiming Tang
BACKGROUND: Sexual health influencers (SHIs) are individuals actively sharing sexual health information with their peers, and they play an important role in promoting HIV care services, including the secondary distribution of HIV self-testing (SD-HIVST). Previous studies used a 6-item empirical leadership scale to identify SHIs. However, this approach may be biased as it does not consider individuals' social networks. OBJECTIVE: This study used a quasi-experimental study design to evaluate how well a newly developed machine learning (ML) model identifies SHIs in promoting SD-HIVST compared to SHIs identified by a scale whose validity had been tested before...
April 24, 2024: JMIR Public Health and Surveillance
https://read.qxmd.com/read/38656671/identification-of-age-related-characteristic-genes-involved-in-severe-covid-19-infection-among-elderly-patients-using-machine-learning-and-immune-cell-infiltration-analysis
#12
JOURNAL ARTICLE
Huan Li, Jin Zhao, Yan Xing, Jia Chen, Ziying Wen, Rui Ma, Fengxia Han, Boyong Huang, Hao Wang, Cui Li, Yang Chen, Xiaoxuan Ning
Elderly patients infected with severe acute respiratory syndrome coronavirus 2 are at higher risk of severe clinical manifestation, extended hospitalization, and increased mortality. Those patients are more likely to experience persistent symptoms and exacerbate the condition of basic diseases with long COVID-19 syndrome. However, the molecular mechanisms underlying severe COVID-19 in the elderly patients remain unclear. Our study aims to investigate the function of the interaction between disease-characteristic genes and immune cell infiltration in patients with severe COVID-19 infection...
April 24, 2024: Biochemical Genetics
https://read.qxmd.com/read/38656659/identification-of-common-mechanisms-and-biomarkers-of-atrial-fibrillation-and-heart-failure-based-on-machine-learning
#13
JOURNAL ARTICLE
Zhijun Zhang, Jianying Ding, Xiaolong Mi, Yuanyuan Lin, Xinjian Li, Jun Lian, Jinwen Liu, Lijuan Qu, Bingye Zhao, Xuewen Li
AIMS: Atrial fibrillation (AF) is the most common arrhythmia. Heart failure (HF) is a disease caused by heart dysfunction. The prevalence of AF and HF were progressively increasing over time. The co-existence of AF and HF presents a significant therapeutic challenge. In order to provide new ideas for the diagnosis of AF and HF, it is necessary to carry out biomarker related studies. METHODS AND RESULTS: The training set and validation set data of AF and HF patient samples were downloaded from the GEO database, 'limma' was used to compare the differences in gene expression levels between the disease group and the normal group to screen for differentially expressed genes (DEGs)...
April 24, 2024: ESC Heart Failure
https://read.qxmd.com/read/38656456/exploring-pyroptosis-related-signature-genes-and-potential-drugs-in-ulcerative-colitis-by-transcriptome-data-and-animal-experimental%C3%A2-validation
#14
JOURNAL ARTICLE
Yang Zhao, Yiming Ma, Jianing Pei, Xiaoxuan Zhao, Yuepeng Jiang, Qingsheng Liu
Ulcerative colitis (UC) is an idiopathic, relapsing inflammatory disorder of the colonic mucosa. Pyroptosis contributes significantly to UC. However, the molecular mechanisms of UC remain unexplained. Herein, using transcriptome data and animal experimental validation, we sought to explore pyroptosis-related molecular mechanisms, signature genes, and potential drugs in UC. Gene profiles (GSE48959, GSE59071, GSE53306, and GSE94648) were selected from the Gene Expression Omnibus (GEO) database, which contained samples derived from patients with active and inactive UC, as well as health controls...
April 24, 2024: Inflammation
https://read.qxmd.com/read/38656382/explainable-ai-for-cho-cell-culture-media-optimization-and-prediction-of-critical-quality-attribute
#15
JOURNAL ARTICLE
Neelesh Gangwar, Keerthiveena Balraj, Anurag S Rathore
Cell culture media play a critical role in cell growth and propagation by providing a substrate; media components can also modulate the critical quality attributes (CQAs). However, the inherent complexity of the cell culture media makes unraveling the impact of the various media components on cell growth and CQAs non-trivial. In this study, we demonstrate an end-to-end machine learning framework for media component selection and prediction of CQAs. The preliminary dataset for feature selection was generated by performing CHO-GS (-/-) cell culture in media formulations with varying metal ion concentrations...
April 24, 2024: Applied Microbiology and Biotechnology
https://read.qxmd.com/read/38656375/can-structure-predict-function-at-individual-level-in-the-human-connectome
#16
JOURNAL ARTICLE
Lars Smolders, Wouter De Baene, Geert-Jan Rutten, Remco van der Hofstad, Luc Florack
Several studies predicting Functional Connectivity (FC) from Structural Connectivity (SC) at individual level have been published in recent years, each promising increased performance and utility. We investigated three of these studies, analyzing whether the results truly represent a meaningful individual-level mapping from SC to FC. Using data from the Human Connectome Project shared accross the three studies, we constructed a predictor by averaging FC of training data and analyzed its performance in the same way...
April 24, 2024: Brain Structure & Function
https://read.qxmd.com/read/38656326/identifying-gut-microbiome-features-that-predict-responsiveness-toward-a-prebiotic-capable-of-increasing-calcium-absorption-a-pilot-study
#17
JOURNAL ARTICLE
Owen Ma, Arindam Dutta, Daniel W Bliss, Cindy H Nakatsu, Connie M Weaver, Corrie M Whisner
Previously, we demonstrated that prebiotics may provide a complementary strategy for increasing calcium (Ca) absorption in adolescents which may improve long-term bone health. However, not all children responded to prebiotic intervention. We determine if certain baseline characteristics of gut microbiome composition predict prebiotic responsiveness. In this secondary analysis, we compared differences in relative microbiota taxa abundance between responders (greater than or equal to 3% increase in Ca absorption) and non-responders (less than 3% increase)...
April 24, 2024: Calcified Tissue International
https://read.qxmd.com/read/38656233/erratum-for-identification-of-precise-3d-ct-radiomics-for-habitat-computation-by-machine-learning-in-cancer
#18
Olivia Prior, Carlos Macarro, Víctor Navarro, Camilo Monreal, Marta Ligero, Alonso Garcia-Ruiz, Garazi Serna, Sara Simonetti, Irene Braña, Maria Vieito, Manuel Escobar, Jaume Capdevila, Annette T Byrne, Rodrigo Dienstmann, Rodrigo Toledo, Paolo Nuciforo, Elena Garralda, Francesco Grussu, Kinga Bernatowicz, Raquel Perez-Lopez
No abstract text is available yet for this article.
May 2024: Radiology. Artificial intelligence
https://read.qxmd.com/read/38656054/machine-learning-classification-based-on-k-nearest-neighbors-for-polsar-data
#19
JOURNAL ARTICLE
Jodavid A Ferreira, Anny K G Rodrigues, Raydonal Ospina, Luis Gomez
In this work, we focus on obtaining insights of the performances of some well-known machine learning image classification techniques (k-NN, Support Vector Machine, randomized decision tree and one based on stochastic distances) for PolSAR (Polarimetric Synthetic Aperture Radar) imagery. We test the classifiers methods on a set of actual PolSAR data and provide some conclusions. The aim of this work is to show that suitable adapted standard machine learning methods offer excellent performances vs. computational complexity trade-off for PolSAR image classification...
2024: Anais da Academia Brasileira de Ciências
https://read.qxmd.com/read/38655907/artificial-intelligence-in-digital-histopathology-for-predicting-patient-prognosis-and-treatment-efficacy-in-breast-cancer
#20
REVIEW
William M Gallagher, Christine McCaffrey, Chowdhury Jahangir, Clodagh Murphy, Caoimbhe Burke, Arman Rahman
INTRODUCTION: Histological images contain phenotypic information predictive of patient outcomes. Due to the heavy workload of pathologists, the time-consuming nature of quantitatively assessing histological features, and human eye limitations to recognize spatial patterns, manually extracting prognostic information in routine pathological workflows remains challenging. Digital pathology has facilitated the mining and quantification of these features utilizing whole-slide image (WSI) scanners and artificial intelligence (AI) algorithms...
April 24, 2024: Expert Review of Molecular Diagnostics
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