keyword
https://read.qxmd.com/read/38642510/predicting-lamb-carcase-composition-from-tissue-depth-measured-at-a-single-point-with-an-ultrawide-band-microwave-scanner
#21
JOURNAL ARTICLE
J Marimuthu, K M W Loudon, R Karayakallile Abraham, V Pamarla, G E Gardner
This study evaluated the ability of portable ultra-wide band microwave system (MiS) to predict lamb carcase computed tomography (CT) determined composition % of fat, lean muscle and bone. Lamb carcases (n = 343) from 6 slaughter groups were MiS scanned at the C-site (45 mm from spine midline at the 12th /13th rib) prior to CT scanning to determine the proportion of fat, muscle and bone. A machine learning ensemble stacking technique was used to construct the MiS prediction equations. Predictions were pooled and divided in 5 groups stratified for each CT composition trait (fat, lean or bone%) and a k-fold cross validation (k = 5) technique was used to test the predictions...
April 6, 2024: Meat Science
https://read.qxmd.com/read/38641688/classification-and-counting-of-cells-in-brightfield-microscopy-images-an-application-of-convolutional-neural-networks
#22
JOURNAL ARTICLE
E K G D Ferreira, G F Silveira
Microscopy is integral to medical research, facilitating the exploration of various biological questions, notably cell quantification. However, this process's time-consuming and error-prone nature, attributed to human intervention or automated methods usually applied to fluorescent images, presents challenges. In response, machine learning algorithms have been integrated into microscopy, automating tasks and constructing predictive models from vast datasets. These models adeptly learn representations for object detection, image segmentation, and target classification...
April 19, 2024: Scientific Reports
https://read.qxmd.com/read/38641540/it-s-not-a-lie-%C3%A2-if-you-believe-it-narrative-analysis-of-autobiographical-memories-reveals-over-confidence-disposition-in-patients-who-confabulate
#23
JOURNAL ARTICLE
Faith Balshin-Rosenberg, Vanessa Ghosh, Asaf Gilboa
Humans perceive their personal memories as fundamentally true, and although memory is prone to inaccuracies, flagrant memory errors are rare. Some patients with damage to the ventromedial prefrontal cortex (vmPFC) recall and act upon patently erroneous memories (spontaneous confabulations). Clinical observations suggest these memories carry a strong sense of confidence, a function ascribed to vmPFC in studies of memory and decision making. However, most studies of the underlying mechanisms of memory overconfidence do not directly probe personal recollections and resort instead to laboratory-based tasks and contrived rating scales...
March 31, 2024: Cortex; a Journal Devoted to the Study of the Nervous System and Behavior
https://read.qxmd.com/read/38641266/morphosyntactic-prediction-in-automatic-neural-processing-of-spoken-language-eeg-evidence
#24
JOURNAL ARTICLE
Maria Alekseeva, Andriy Myachykov, Beatriz Bermudez Margaretto, Yury Shtyrov
Automatic parsing of syntactic information by the human brain is a well-established phenomenon, but its mechanisms remain poorly understood. Its best-known neurophysiological reflection is early left-anterior negativity (ELAN) ERP component with two alternative hypotheses for its origin: (1) error detection, or (2) morphosyntactic prediction/priming. To test these alternatives, we conducted two experiments using a non-attend passive design with visual distraction and recorded ERPs to spoken pronoun-verb phrases and the same critical verbs presented in isolation without pronouns...
April 17, 2024: Brain Research
https://read.qxmd.com/read/38641229/bioequivalence-risk-assessment-of-oral-formulations-containing-racemic-ibuprofen-through-a-chiral-physiologically-based-pharmacokinetic-model-of-ibuprofen-enantiomers
#25
JOURNAL ARTICLE
Javier Reig-López, Marina Cuquerella-Gilabert, Enrique Bandín-Vilar, Matilde Merino-Sanjuán, Víctor Mangas-Sanjuán, Alfredo García-Arieta
The characterization of the time course of ibuprofen enantiomers can be useful in the selection of the most sensitive analyte in bioequivalence studies. Physiologically based pharmacokinetic (PBPK) modelling and simulation represents the most efficient methodology to virtually assess bioequivalence outcomes. In this work, we aim to develop and verify a PBPK model for ibuprofen enantiomers administered as a racemic mixture with different immediate release dosage forms to anticipate bioequivalence outcomes based on different particle size distributions...
April 17, 2024: European Journal of Pharmaceutics and Biopharmaceutics
https://read.qxmd.com/read/38641056/validating-health-economic-models-with-the-probabilistic-analysis-check-dashboard-pacboard
#26
JOURNAL ARTICLE
Xavier G L V Pouwels, Karel Kroeze, Naomi van der Linden, Michelle M A Kip, Hendrik Koffijberg
OBJECTIVES: Health economic (HE) models are often considered as "black boxes" because they are not publicly available and lack transparency, which prevents independent scrutiny of HE models. Additionally, validation efforts and validation status of HE models are not systematically reported. Methods to validate HE models in absence of their full underlying code are therefore urgently needed to improve health policy making.This study aimed to develop and test a generic dashboard to systematically explore the workings of HE models and validate their model parameters and outcomes...
April 17, 2024: Value in Health: the Journal of the International Society for Pharmacoeconomics and Outcomes Research
https://read.qxmd.com/read/38640839/to-what-extent-can-mastication-functionality-be-restored-following-mandibular-reconstruction-surgery-a-computer-modeling-approach
#27
JOURNAL ARTICLE
Hamidreza Aftabi, Benedikt Sagl, John E Lloyd, Eitan Prisman, Antony Hodgson, Sidney Fels
STATEMENT OF PROBLEM: Advanced cases of head and neck cancer involving the mandible often require surgical removal of diseased sections and subsequent replacement with donor bone. During the procedure, the surgeon must make decisions regarding which bones or tissues to resect. This requires balancing tradeoffs related to issues such as surgical access and post-operative function; however, the latter is often difficult to predict, especially given that long-term functionality also depends on the impact of post-operative rehabilitation programs...
April 17, 2024: Computer Methods and Programs in Biomedicine
https://read.qxmd.com/read/38640473/machine-learning-based-prediction-of-changes-in-the-clinical-condition-of-patients-with-complex-chronic-diseases-2-phase-pilot-prospective-single-center-observational-study
#28
JOURNAL ARTICLE
Celia Alvarez-Romero, Alejandro Polo-Molina, Eugenio Francisco Sánchez-Úbeda, Carlos Jimenez-De-Juan, Maria Pastora Cuadri-Benitez, Jose Antonio Rivas-Gonzalez, Jose Portela, Rafael Palacios, Carlos Rodriguez-Morcillo, Antonio Muñoz, Carlos Luis Parra-Calderon, Maria Dolores Nieto-Martin, Manuel Ollero-Baturone, Carlos Hernández-Quiles
BACKGROUND: Functional impairment is one of the most decisive prognostic factors in patients with complex chronic diseases. A more significant functional impairment indicates that the disease is progressing, which requires implementing diagnostic and therapeutic actions that stop the exacerbation of the disease. OBJECTIVE: This study aimed to predict alterations in the clinical condition of patients with complex chronic diseases by predicting the Barthel Index (BI), to assess their clinical and functional status using an artificial intelligence model and data collected through an internet of things mobility device...
April 19, 2024: JMIR Formative Research
https://read.qxmd.com/read/38639980/a-novel-machine-learning-algorithm-for-creating-risk-adjusted-payment-formulas
#29
JOURNAL ARTICLE
Corinne Andriola, Randall P Ellis, Jeffrey J Siracuse, Alex Hoagland, Tzu-Chun Kuo, Heather E Hsu, Allan Walkey, Karen E Lasser, Arlene S Ash
IMPORTANCE: Models predicting health care spending and other outcomes from administrative records are widely used to manage and pay for health care, despite well-documented deficiencies. New methods are needed that can incorporate more than 70 000 diagnoses without creating undesirable coding incentives. OBJECTIVE: To develop a machine learning (ML) algorithm, building on Diagnostic Item (DXI) categories and Diagnostic Cost Group (DCG) methods, that automates development of clinically credible and transparent predictive models for policymakers and clinicians...
April 5, 2024: JAMA health forum
https://read.qxmd.com/read/38639653/automated-determination-of-the-ion-recombination-correction-factor-k-sat-in-ultra-high-dose-rate-electron-radiation-therapy
#30
JOURNAL ARTICLE
Michaël Claessens, Verdi Vanreusel, Alessia Gasparini, Luana de Freitas Nascimento, Burak Yalvec, Brigitte Reniers, Dirk Verellen
BACKGROUND: Plane-parallel ionization chambers are the recommended secondary standard systems for clinical reference dosimetry of electrons. Dosimetry in high dose rate and dose-per-pulse (DPP) is challenging as ionization chambers are subject to ion recombination, especially when dose rate and/or DPP is increased beyond the range of conventional radiotherapy. The lack of universally accepted models for correction of ion recombination in UDHR is still an issue as it is, especially in FLASH-RT research, which is crucial in order to be able to accurately measure the dose for a wide range of dose rates and DPPs...
April 19, 2024: Medical Physics
https://read.qxmd.com/read/38639496/development-of-novel-methods-for-qsar-modeling-by-machine-learning-repeatedly-a-case-study-on-drug-distribution-to-each-tissue
#31
JOURNAL ARTICLE
Koichi Handa, Saki Yoshimura, Michiharu Kageyama, Takeshi Iijima
Artificial intelligence is expected to help identify excellent candidates in drug discovery. However, we face a lack of data, as it is time-consuming and expensive to acquire raw data perfectly for many compounds. Hence, we tried to develop a novel quantitative structure-activity relationship (QSAR) method to predict a parameter more precisely from an incomplete data set via optimizing data handling by making use of predicted explanatory variables. As a case study we focused on the tissue-to-plasma partition coefficient (Kp), which is an important parameter for understanding drug distribution in tissues and building the physiologically based pharmacokinetic model and is a representative of small and sparse data sets...
April 19, 2024: Journal of Chemical Information and Modeling
https://read.qxmd.com/read/38639160/development-of-generic-metabolic-raman-calibration-models-using-solution-titration-in-aqueous-phase-and-data-augmentation-for-in-line-cell-culture-analysis
#32
JOURNAL ARTICLE
Zhijun Zhang, Zhe Lang, Gong Chen, Hang Zhou, Weichang Zhou
This study presents a novel approach for developing generic metabolic Raman calibration models for in-line cell culture analysis using glucose and lactate stock solution titration in an aqueous phase and data augmentation techniques. First, a successful set-up of the titration method was achieved by adding glucose or lactate solution at several different constant rates into the aqueous phase of a bench-top bioreactor. Subsequently, the in-line glucose and lactate concentration were calculated and interpolated based on the rate of glucose and lactate addition, enabling data augmentation and enhancing the robustness of the metabolic calibration model...
April 19, 2024: Biotechnology and Bioengineering
https://read.qxmd.com/read/38638980/a-comprehensive-study-to-estimate-income-and-price-elasticities-of-household-electricity-consumption-using-auto-metrics
#33
JOURNAL ARTICLE
Wen Huang, Heng Li, Zhein Li
This study focuses on understanding family electricity consumption behaviors in response to income and price changes from 1994 to 2022 across 12 prominent European countries. We employ a unique econometric approach, Auto-selection Models, to analyze the nuances of energy demand elasticity. Our methodology includes the use of saturation techniques, which are highly effective in identifying anomalies and discontinuities in the data, ensuring the reliability of our results. The Auto-metrics method streamlines the model selection process and enhances the accuracy of elasticity predictions...
April 30, 2024: Heliyon
https://read.qxmd.com/read/38638977/airfoil-aerodynamic-performance-prediction-using-machine-learning-and-surrogate-modeling
#34
JOURNAL ARTICLE
Amir Teimourian, Daniel Rohacs, Kamil Dimililer, Hanifa Teimourian, Melih Yildiz, Utku Kale
In recent times, machine learning algorithms have gained significant traction in addressing aerodynamic challenges. These algorithms prove invaluable for predicting the aerodynamic performance, specifically the Lift-to-Drag ratio of airfoil datasets, when the dataset is sufficiently large and diverse. In this paper, we delve into an exploration of five machine learning algorithms: Random Forest, Gradient Boosting Regression, Decision Tree Regressor, AdaBoost Algorithm, and Linear Regression. These algorithms are scrutinized within the context of various train/test ratios to predict a crucial aerodynamic performance metric-the lift-to-drag ratio-for different angle of attack values...
April 30, 2024: Heliyon
https://read.qxmd.com/read/38638954/glu-ensemble-an-ensemble-deep-learning-framework-for-blood-glucose-forecasting-in-type-2-diabetes-patients
#35
JOURNAL ARTICLE
Yechan Han, Dae-Yeon Kim, Jiyoung Woo, Jaeyun Kim
Diabetes is a chronic metabolic disorder characterized by elevated blood glucose levels, posing significant health risks such as cardiovascular disease, and nerve, kidney, and eye damage. Effective management of blood glucose is essential for individuals with diabetes to mitigate these risks. This study introduces the Glu-Ensemble, a deep learning framework designed for precise blood glucose forecasting in patients with type 2 diabetes. Unlike other predictive models, Glu-Ensemble addresses challenges related to small sample sizes, data quality issues, reliance on strict statistical assumptions, and the complexity of models...
April 30, 2024: Heliyon
https://read.qxmd.com/read/38638791/analysis-of-vocal-signatures-of-covid-19-in-cough-sounds-a-newer-diagnostic-approach-using-artificial-intelligence
#36
JOURNAL ARTICLE
Bhavesh Modi, Manika Sharma, Harsh Hemani, Hemant Joshi, Prashant Kumar, Sakthivel Narayanan, Rima Shah
BACKGROUND: Artificial intelligence (AI) based models are explored increasingly in the medical field. The highly contagious pandemic of coronavirus disease 2019 (COVID-19) affected the world and availability of diagnostic tools high resolution computed tomography (HRCT) and/or real-time reverse transcriptase-polymerase chain reaction (RTPCR) was very limited, costly and time consuming. Therefore, the use of AI in COVID-19 for diagnosis using cough sounds can be efficacious and cost effective for screening in clinic or hospital and help in early diagnosis and further management of patients...
March 2024: Curēus
https://read.qxmd.com/read/38638493/generalizable-stereo-depth-estimation-with-masked-image-modelling
#37
JOURNAL ARTICLE
Samyakh Tukra, Haozheng Xu, Chi Xu, Stamatia Giannarou
Generalizable and accurate stereo depth estimation is vital for 3D reconstruction, especially in surgery. Supervised learning methods obtain best performance however, limited ground truth data for surgical scenes limits generalizability. Self-supervised methods don't need ground truth, but suffer from scale ambiguity and incorrect disparity prediction due to inconsistency of photometric loss. This work proposes a two-phase training procedure that is generalizable and retains the high performance of supervised methods...
2024: Healthcare Technology Letters
https://read.qxmd.com/read/38638352/fieldsimr-an-r-package-for-simulating-plot-data-in-multi-environment-field-trials
#38
JOURNAL ARTICLE
Christian R Werner, Dorcus C Gemenet, Daniel J Tolhurst
This paper presents a general framework for simulating plot data in multi-environment field trials with one or more traits. The framework is embedded within the R package FieldSimR, whose core function generates plot errors that capture global field trend, local plot variation, and extraneous variation at a user-defined ratio. FieldSimR's capacity to simulate realistic plot data makes it a flexible and powerful tool for a wide range of improvement processes in plant breeding, such as the optimisation of experimental designs and statistical analyses of multi-environment field trials...
2024: Frontiers in Plant Science
https://read.qxmd.com/read/38638138/prediction-of-glycosylated-hemoglobin-level-in-patients-with-cardiovascular-diseases-and-type-2-diabetes-mellitus-with-respect-to-anti-diabetic-medication
#39
JOURNAL ARTICLE
Alisher Ikramov, Shakhnoza Mukhtarova, Raisa Trigulova, Dilnoza Alimova, Saodat Abdullaeva
UNLABELLED: Blood glycosylated hemoglobin level can be affected by various factors in patients with type 2 diabetes and cardiovascular diseases. Frequent measurements are expensive, and a suitable estimation method could improve treatment outcomes. PATIENTS AND METHODS: 93 patients were recruited in this research. We analyzed a number of parameters such as age, glucose level, blood pressure, Body Mass Index, cholesterol level, echocardiography et al. Patients were prescribed metformin...
2024: Frontiers in Endocrinology
https://read.qxmd.com/read/38638123/bayesage-a-maximum-likelihood-algorithm-to-predict-epigenetic-age
#40
JOURNAL ARTICLE
Lajoyce Mboning, Liudmilla Rubbi, Michael Thompson, Louis-S Bouchard, Matteo Pellegrini
Introduction: DNA methylation, specifically the formation of 5-methylcytosine at the C5 position of cytosine, undergoes reproducible changes as organisms age, establishing it as a significant biomarker in aging studies. Epigenetic clocks, which integrate methylation patterns to predict age, often employ linear models based on penalized regression, yet they encounter challenges in handling missing data, count-based bisulfite sequence data, and interpretation. Methods: To address these limitations, we introduce BayesAge, an extension of the scAge methodology originally designed for single-cell DNA methylation analysis...
2024: Front Bioinform
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