keyword
https://read.qxmd.com/read/38613800/pros1-is-a-crucial-gene-in-the-macrophage-efferocytosis-of-diabetic-foot-ulcers-a-concerted-analytical-approach-through-the-prisms-of-computer-analysis
#21
JOURNAL ARTICLE
Hongshuo Shi, Zhicheng Zhang, Xin Yuan, Guobin Liu, Weijing Fan, Wenbo Wang
BACKGROUND: Diabetic foot ulcers (DFUs) pose a serious long-term threat because of elevated mortality and disability risks. Research on its biomarkers is still, however, very limited. In this paper, we have effectively identified biomarkers linked with macrophage excretion in diabetic foot ulcers through the application of bioinformatics and machine learning methodologies. These findings were subsequently validated using external datasets and animal experiments. Such discoveries are anticipated to offer novel insights and approaches for the early diagnosis and treatment of DFU...
April 10, 2024: Aging
https://read.qxmd.com/read/38612432/aflibercept-off-target-effects-in-diabetic-macular-edema-an-in-silico-modeling-approach
#22
JOURNAL ARTICLE
Morgane Blanot, Ricardo Pedro Casaroli-Marano, Jordi Mondéjar-Medrano, Thaïs Sallén, Esther Ramírez, Cristina Segú-Vergés, Laura Artigas
Intravitreal aflibercept injection (IAI) is a treatment for diabetic macular edema (DME), but its mechanism of action (MoA) has not been completely elucidated. Here, we aimed to explore IAI's MoA and its multi-target nature in DME pathophysiology with an in silico (computer simulation) disease model. We used the Therapeutic Performance Mapping System (Anaxomics Biotech property) to generate mathematical models based on the available scientific knowledge at the time of the study, describing the relationship between the modulation of vascular endothelial growth factor receptors (VEGFRs) by IAI and DME pathophysiological processes...
March 23, 2024: International Journal of Molecular Sciences
https://read.qxmd.com/read/38611653/machine-learning-and-deep-learning-models-for-nocturnal-high-and-low-glucose-prediction-in-adults-with-type-1-diabetes
#23
JOURNAL ARTICLE
Roman M Kozinetz, Vladimir B Berikov, Julia F Semenova, Vadim V Klimontov
Glucose management at night is a major challenge for people with type 1 diabetes (T1D), especially for those managed with multiple daily injections (MDIs). In this study, we developed machine learning (ML) and deep learning (DL) models to predict nocturnal glucose within the target range (3.9-10 mmol/L), above the target range, and below the target range in subjects with T1D managed with MDIs. The models were trained and tested on continuous glucose monitoring data obtained from 380 subjects with T1D. Two DL algorithms-multi-layer perceptron (MLP) and a convolutional neural network (CNN)-as well as two classic ML algorithms, random forest (RF) and gradient boosting trees (GBTs), were applied...
March 30, 2024: Diagnostics
https://read.qxmd.com/read/38611606/artificial-intelligence-enhanced-analysis-of-in-vivo-confocal-microscopy-in-corneal-diseases-a-review
#24
REVIEW
Katarzyna Kryszan, Adam Wylęgała, Magdalena Kijonka, Patrycja Potrawa, Mateusz Walasz, Edward Wylęgała, Bogusława Orzechowska-Wylęgała
Artificial intelligence (AI) has seen significant progress in medical diagnostics, particularly in image and video analysis. This review focuses on the application of AI in analyzing in vivo confocal microscopy (IVCM) images for corneal diseases. The cornea, as an exposed and delicate part of the body, necessitates the precise diagnoses of various conditions. Convolutional neural networks (CNNs), a key component of deep learning, are a powerful tool for image data analysis. This review highlights AI applications in diagnosing keratitis, dry eye disease, and diabetic corneal neuropathy...
March 26, 2024: Diagnostics
https://read.qxmd.com/read/38607977/a-novel-electronic-health-record-based-machine-learning-model-to-predict-severe-hypoglycemia-leading-to-hospitalizations-in-older-adults-with-diabetes-a-territory-wide-cohort-and-modeling-study
#25
JOURNAL ARTICLE
Mai Shi, Aimin Yang, Eric S H Lau, Andrea O Y Luk, Ronald C W Ma, Alice P S Kong, Raymond S M Wong, Jones C M Chan, Juliana C N Chan, Elaine Chow
BACKGROUND: Older adults with diabetes are at high risk of severe hypoglycemia (SH). Many machine-learning (ML) models predict short-term hypoglycemia are not specific for older adults and show poor precision-recall. We aimed to develop a multidimensional, electronic health record (EHR)-based ML model to predict one-year risk of SH requiring hospitalization in older adults with diabetes. METHODS AND FINDINGS: We adopted a case-control design for a retrospective territory-wide cohort of 1,456,618 records from 364,863 unique older adults (age ≥65 years) with diabetes and at least 1 Hong Kong Hospital Authority attendance from 2013 to 2018...
April 2024: PLoS Medicine
https://read.qxmd.com/read/38607291/lightgbm-outperforms-other-machine-learning-techniques-in-predicting-graft-failure-after-liver-transplantation-creation-of-a-predictive-model-through-large-scale-analysis
#26
JOURNAL ARTICLE
Rintaro Yanagawa, Kazuhiro Iwadoh, Miho Akabane, Yuki Imaoka, Kliment Krassimirov Bozhilov, Marc L Melcher, Kazunari Sasaki
BACKGROUND: The incidence of graft failure following liver transplantation (LTx) is consistent. While traditional risk scores for LTx have limited accuracy, the potential of machine learning (ML) in this area remains uncertain, despite its promise in other transplant domains. This study aims to determine ML's predictive limitations in LTx by replicating methods used in previous heart transplant research. METHODS: This study utilized the UNOS STAR database, selecting 64,384 adult patients who underwent LTx between 2010 and 2020...
April 2024: Clinical Transplantation
https://read.qxmd.com/read/38606596/enhancing-selection-of-alcohol-consumption-associated-genes-by-random-forest
#27
JOURNAL ARTICLE
Chenglin Lyu, Roby Joehanes, Tianxiao Huan, Daniel Levy, Yi Li, Mengyao Wang, Xue Liu, Chunyu Liu, Jiantao Ma
Machine learning methods have been used in identifying omics markers for a variety of phenotypes. We aimed to examine whether a supervised machine learning algorithm can improve identification of alcohol-associated transcriptomic markers. In this study, we analyzed array-based, whole-blood derived expression data for 17,873 gene transcripts in 5,508 Framingham Heart Study participants. By using the Boruta algorithm, a supervised Random Forest (RF)-based feature selection method, we selected 25 alcohol-associated transcripts...
April 12, 2024: British Journal of Nutrition
https://read.qxmd.com/read/38604060/a-review-of-the-application-of-deep-learning-in-obesity-from-early-prediction-aid-to-advanced-management-assistance
#28
REVIEW
Xinghao Yi, Yangzhige He, Shan Gao, Ming Li
BACKGROUND AND AIMS: Obesity is a chronic disease which can cause severe metabolic disorders. Machine learning (ML) techniques, especially deep learning (DL), have proven to be useful in obesity research. However, there is a dearth of systematic reviews of DL applications in obesity. This article aims to summarize the current trend of DL usage in obesity research. METHODS: An extensive literature review was carried out across multiple databases, including PubMed, Embase, Web of Science, Scopus, and Medline, to collate relevant studies published from January 2018 to September 2023...
April 4, 2024: Diabetes & Metabolic Syndrome
https://read.qxmd.com/read/38603589/artificial-intelligence-enhanced-electrocardiogram-analysis-for-identifying-cardiac-autonomic-neuropathy-in-patients-with-diabetes
#29
JOURNAL ARTICLE
Krzysztof Irlik, Hanadi Aldosari, Mirela Hendel, Hanna Kwiendacz, Julia Piaśnik, Justyna Kulpa, Paweł Ignacy, Sylwia Boczek, Mikołaj Herba, Kamil Kegler, Frans Coenen, Janusz Gumprecht, Yalin Zheng, Gregory Y H Lip, Uazman Alam, Katarzyna Nabrdalik
AIM: To develop and employ machine learning (ML) algorithms to analyse electrocardiograms (ECGs) for the diagnosis of cardiac autonomic neuropathy (CAN). MATERIALS AND METHODS: We used motif and discord extraction techniques, alongside long short-term memory networks, to analyse 12-lead, 10-s ECG tracings to detect CAN in patients with diabetes. The performance of these methods with the support vector machine classification model was evaluated using 10-fold cross validation with the following metrics: accuracy, precision, recall, F1 score, and area under the receiver-operating characteristic curve (AUC)...
April 11, 2024: Diabetes, Obesity & Metabolism
https://read.qxmd.com/read/38602477/applications-of-data-characteristic-ai-assisted-raman-spectroscopy-in-pathological-classification
#30
JOURNAL ARTICLE
Xun Chen, Jianghao Shen, Chang Liu, Xiaoyu Shi, Weichen Feng, Hongyi Sun, Weifeng Zhang, Shengpai Zhang, Yuqing Jiao, Jing Chen, Kun Hao, Qi Gao, Yitong Li, Weili Hong, Pu Wang, Limin Feng, Shuhua Yue
Raman spectroscopy has been widely used for label-free biomolecular analysis of cells and tissues for pathological diagnosis in vitro and in vivo. AI technology facilitates disease diagnosis based on Raman spectroscopy, including machine learning (PCA and SVM), manifold learning (UMAP), and deep learning (ResNet and AlexNet). However, it is not clear how to optimize the appropriate AI classification model for different types of Raman spectral data. Here, we selected five representative Raman spectral data sets, including endometrial carcinoma, hepatoma extracellular vesicles, bacteria, melanoma cell, diabetic skin, with different characteristics regarding sample size, spectral data size, Raman shift range, tissue sites, Kullback-Leibler (KL) divergence, and significant Raman shifts (i...
April 11, 2024: Analytical Chemistry
https://read.qxmd.com/read/38601206/feature-selection-and-risk-prediction-for-diabetic-patients-with-ketoacidosis-based-on-mimic-iv
#31
JOURNAL ARTICLE
Yang Liu, Wei Mo, He Wang, Zixin Shao, Yanping Zeng, Jianlu Bi
BACKGROUND: Diabetic ketoacidosis (DKA) is a frequent acute complication of diabetes mellitus (DM). It develops quickly, produces severe symptoms, and greatly affects the lives and health of individuals with DM.This article utilizes machine learning methods to examine the baseline characteristics that significantly contribute to the development of DKA. Its goal is to identify and prevent DKA in a targeted and early manner. METHODS: This study selected 2382 eligible diabetic patients from the MIMIC-IV dataset, including 1193 DM patients with ketoacidosis and 1186 DM patients without ketoacidosis...
2024: Frontiers in Endocrinology
https://read.qxmd.com/read/38600664/socp-a-framework-predicting-smorf-coding-potential-based-on-tis-and-in-frame-features-and-effectively-applied-in-the-human-genome
#32
JOURNAL ARTICLE
Zhao Peng, Jiaqiang Li, Xingpeng Jiang, Cuihong Wan
Small open reading frames (smORFs) have been acknowledged to play various roles on essential biological pathways and affect human beings from diabetes to tumorigenesis. Predicting smORFs in silico is quite a prerequisite for processing the omics data. Here, we proposed the smORF-coding-potential-predicting framework, sOCP, which provides functions to construct a model for predicting novel smORFs in some species. The sOCP model constructed in human was based on in-frame features and the nucleotide bias around the start codon, and the small feature subset was proved to be competent enough and avoid overfitting problems for complicated models...
March 27, 2024: Briefings in Bioinformatics
https://read.qxmd.com/read/38599293/development-and-evaluation-of-a-prediction-model-for-peripheral-artery-disease-related-major-adverse-limb-events-using-novel-biomarker-data
#33
JOURNAL ARTICLE
Ben Li, Rakan Nassereldine, Abdelrahman Zamzam, Muzammil H Syed, Muhammad Mamdani, Mohammed Al-Omran, Rawand Abdin, Mohammad Qadura
BACKGROUND: Prognostic tools for individuals with peripheral artery disease (PAD) remain limited. We developed prediction models for 3-year PAD related major adverse limb events (MALE) using demographic, clinical, and biomarker data previously validated by our group. METHODS: We performed a prognostic study using a prospectively recruited cohort of PAD patients (n = 569). Demographic/clinical data were recorded including sex, age, comorbidities, previous procedures, and medications...
April 8, 2024: Journal of Vascular Surgery
https://read.qxmd.com/read/38599278/baseline-phenotypes-with-preserved-%C3%AE-cell-function-and-high-insulin-concentrations-have-the-best-improvements-in-glucose-tolerance-after-weight-loss-results-from-the-prospective-dexlife-and-egir-risc-studies
#34
JOURNAL ARTICLE
S Sabatini, J J Nolan, G O'Donoghue, A Kennedy, John Petrie, Mark Walker, D J O'Gorman, A Gastaldelli
BACKGROUND: Weight loss and lifestyle intervention improve glucose tolerance delaying the onset of type 2 diabetes (T2D), but individual responses are highly variable. Determining the predictive factors linked to the beneficial effects of weight loss on glucose tolerance could provide tools for individualized prevention plans. Thus, the aim was to investigate the relationship between pre-intervention values of insulin sensitivity and secretion and the improvement in glucose metabolism after weight loss...
April 8, 2024: Metabolism: Clinical and Experimental
https://read.qxmd.com/read/38596863/association-between-sleep-efficiency-variability-and-cognition-among-older-adults-cross-sectional-accelerometer-study
#35
JOURNAL ARTICLE
Collin Sakal, Tingyou Li, Juan Li, Can Yang, Xinyue Li
BACKGROUND: Sleep efficiency is often used as a measure of sleep quality. Getting sufficiently high-quality sleep has been associated with better cognitive function among older adults; however, the relationship between day-to-day sleep quality variability and cognition has not been well-established. OBJECTIVE: We aimed to determine the relationship between day-to-day sleep efficiency variability and cognitive function among older adults, using accelerometer data and 3 cognitive tests...
April 4, 2024: JMIR aging
https://read.qxmd.com/read/38596848/scalable-approach-to-consumer-wearable-postmarket-surveillance-development-and-validation-study
#36
JOURNAL ARTICLE
Richard M Yoo, Ben T Viggiano, Krishna N Pundi, Jason A Fries, Aydin Zahedivash, Tanya Podchiyska, Natasha Din, Nigam H Shah
BACKGROUND: With the capability to render prediagnoses, consumer wearables have the potential to affect subsequent diagnoses and the level of care in the health care delivery setting. Despite this, postmarket surveillance of consumer wearables has been hindered by the lack of codified terms in electronic health records (EHRs) to capture wearable use. OBJECTIVE: We sought to develop a weak supervision-based approach to demonstrate the feasibility and efficacy of EHR-based postmarket surveillance on consumer wearables that render atrial fibrillation (AF) prediagnoses...
April 4, 2024: JMIR Medical Informatics
https://read.qxmd.com/read/38591078/unlocking-new-potential-of-clinical-diagnosis-with-artificial-intelligence-finding-new-patterns-of-clinical-and-lab-data
#37
EDITORIAL
Pradeep Kumar Dabla
Recent advancements in science and technology, coupled with the proliferation of data, have also urged laboratory medicine to integrate with the era of artificial intelligence (AI) and machine learning (ML). In the current practices of evidence-based medicine, the laboratory tests analysing disease patterns through the association rule mining (ARM) have emerged as a modern tool for the risk assessment and the disease stratification, with the potential to reduce cardio-vascular disease (CVD) mortality. CVDs are the well recognised leading global cause of mortality with the higher fatality rates in the Indian population due to associated factors like hypertension, diabetes, and lifestyle choices...
March 15, 2024: World Journal of Diabetes
https://read.qxmd.com/read/38590914/estimating-the-effect-of-realistic-improvements-of-metformin-adherence-on-covid-19-mortality-using-targeted-machine-learning
#38
JOURNAL ARTICLE
Sky Qiu, Alan E Hubbard, Juan Pablo Gutiérrez, Ganesh Pimpale, Arturo Juárez-Flores, Rakesh Ghosh, Iván de Jesús Ascencio-Montiel, Stefano M Bertozzi
BACKGROUND: Type 2 diabetes elevates the risk of severe outcomes in COVID-19 patients, with multiple studies reporting higher case fatality rates. Metformin is a widely used medication for glycemic management. We hypothesize that improved adherence to metformin may lower COVID-19 post-infection mortality risk in this group. Utilizing data from the Mexican Social Security Institute (IMSS), we investigate the relationship between metformin adherence and mortality following COVID-19 infection in patients with chronic metformin prescriptions...
June 2024: Global epidemiology
https://read.qxmd.com/read/38589865/utilization-of-machine-learning-models-in-predicting-caries-risk-groups-and-oral-health-related-risk-factors-in-adults
#39
JOURNAL ARTICLE
Burak Tunahan Çiftçi, Firdevs Aşantoğrol
BACKGROUND: The aim of this study was to analyse the risk factors that affect oral health in adults and to evaluate the success of different machine learning algorithms in predicting these risk factors. METHODS: This study included 2000 patients aged 18 years and older who were admitted to the Department of Oral and Maxillofacial Radiology, Faculty of Dentistry, Gaziantep University, between September and December 2023. In this study, patients completed a 30-item questionnaire designed to assess the factors that affect the decayed, missing, and filled teeth (DMFT)...
April 8, 2024: BMC Oral Health
https://read.qxmd.com/read/38589799/development-and-validation-of-prediction-models-for-papillary-thyroid-cancer-structural-recurrence-using-machine-learning-approaches
#40
JOURNAL ARTICLE
Hongxi Wang, Chao Zhang, Qianrui Li, Tian Tian, Rui Huang, Jiajun Qiu, Rong Tian
BACKGROUND: Although papillary thyroid cancer (PTC) patients are known to have an excellent prognosis, up to 30% of patients experience disease recurrence after initial treatment. Accurately predicting disease prognosis remains a challenge given that the predictive value of several predictors remains controversial. Thus, we investigated whether machine learning (ML) approaches based on comprehensive predictors can predict the risk of structural recurrence for PTC patients. METHODS: A total of 2244 patients treated with thyroid surgery and radioiodine were included...
April 8, 2024: BMC Cancer
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