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Suggested Topics within your search.
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16321
Advancing invasive species monitoring: A free tool for detecting invasive cane toads using continental-scale data
Published 2025-11-01“…We validated thousands of BirdNET predictions across Australia, and our classifier achieved over 90 % accuracy even at many sites outside the areas from which the training data were obtained. …”
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16322
Use of Artificial Intelligence in Imaging Dementia
Published 2024-11-01“…A convolutional neural network method was developed, and external validation predicted final clinical diagnoses of Alzheimer’s disease, dementia with Lewy bodies, mild cognitive impairment due to Alzheimer’s disease, or cognitively normal with FDG-PET. …”
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16323
Diagnosing Autoimmune Bullous Diseases—An Indian Perspective
Published 2025-05-01“…Accurate diagnosis of the specific subtype of AIBD is crucial for effective management and predicting prognosis, especially in cases with an increased risk of malignancy. …”
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16324
Artificial Intelligence Driven Human Identification
Published 2023-08-01“…Gait (i.e., an individual’s unique walking pattern/style) is a leading exponent when compared to first-generation biometric modalities as it is unobtrusive (i.e., it requires no contact with the individual), hence proving gait to be an optimal solution to human identification at a distance.This paper proposes an automatic identification system that analyzes gait to identify humans at a distance and predicts the strength of the match (i.e., probability of the match being positive) between two gait profiles. …”
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16325
Cross-Network User Identity Linkage Method with Deep Learning Based on SDNE Embedding Representation
Published 2025-02-01“…Experimental verification is conducted on the real social network dataset and synthetic network datasets, and the experimental results are more than 8 percentage points higher than the baseline algorithms PALE (predict anchor links via embedding), CLF (collective link fusion) and Deeplink in accuracy and F1 value, indicating that the eSUIL algorithm proposed in this paper has excellent performance in user identity linkage. …”
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16326
Harnessing AI and Quantum Computing for Revolutionizing Drug Discovery and Approval Processes: Case Example for Collagen Toxicity
Published 2025-07-01“…By generating computational data, predicting the efficacy of pharmaceuticals, and assessing their safety, AI and quantum computing can accelerate and optimize the process of identifying potential drug candidates. …”
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16327
Optimizing Small Wind Turbine Blades: A BEMT Approach Optimizing Small Wind Turbine Blades: A BEMT Approach
Published 2023-12-01“…Results indicate that at an average wind speed of 0 - 2.3 m/s (8.28 km/h), 3-blade, 5-blade, and 7-blade sets were designed and optimized for performance. The predictions suggest rated outputs of 7.5 W, 20 W, and 40 W for Designs 1, 2, and 3, respectively. …”
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16328
Overcoming the challenges of data integration in ecosystem studies with machine learning workflows: an example from the Santos project
Published 2024-04-01“…These challenges encompass defining a conceptual model outlining cause-and-effect relationships, addressing dissimilarities in data source quantity and information content, grappling with missing or noisy data, fine-tuning model optimization, achieving accurate predictions, and tackling the issue of imbalanced observations across factors. …”
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16329
Evaluating Recycling Initiatives for Landfill Diversion in Developing Economies Using Integrated Machine Learning Techniques
Published 2025-05-01“…It evaluates the recycling diversion rate (RDR) of household recyclables (HSRs) across local government areas using field surveys and population data. Machine learning algorithms (logistic regression, random forest, XGBoost, and CatBoost) refined with Bayesian optimisation were employed to predict household recycling motivation. …”
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16330
Contrastive cross-domain sequential recommendation with attention-aware mechanism
Published 2025-04-01“…Abstract Cross-domain sequential recommendation (CDSR) aims to predict future sequential interactions in a target domain by analyzing historical sequence data from different domains. …”
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16331
Mantle Flow and Anisotropy in Subduction Zones: Modeling and Clustering of Olivine Textures
Published 2025-07-01“…We compare olivine texture evolution predicted using different methods in both retreating and stationary‐trench settings. …”
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16332
Stability of the Subaxial Spine after Penetrating Trauma: Do Classification Systems Apply?
Published 2018-01-01“…The TLICS, SLIC, and three-column classification systems cannot be applied to CSGSW to quantify injury severity, predict outcomes, or guide treatment decision-making. …”
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16333
Chemoreactomic study of fonturacetam effects: molecular mechanisms of influence on adipose tissue metabolism
Published 2024-08-01“…The lipolytic effect is predicted specifically for fonturacetam as a result of activation by this molecule of β3-adrenoceptors, adenosine receptors, glucagon-like peptide, sphingosine phosphate and peroxisome proliferators, as well as specific inhibition of cannabinoid, opioid, histamine, glutamate, nociceptin, orexin and neuropeptide Y receptors. …”
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16334
A Hybrid Machine Learning Approach for Estimating Aboveground Biomass and Carbon Stock in Tanzania’s Miombo Woodlands
Published 2025-01-01“…A model (ANN-RF) was developed using a combination of ANN and RF models. Initially, the RF algorithm combined the predictions from the ANN models. …”
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16335
Overcoming the challenges of data integration in ecosystem studies with machine learning workflows: an example from the Santos project
Published 2024-04-01“…These challenges encompass defining a conceptual model outlining cause-and-effect relationships, addressing dissimilarities in data source quantity and information content, grappling with missing or noisy data, fine-tuning model optimization, achieving accurate predictions, and tackling the issue of imbalanced observations across factors. …”
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16336
Collaborative Optimization Planning Method for Distribution Network Considering “Hydropower, Photovoltaic, Storage, and Charging”
Published 2024-01-01“…Secondly, the trip chain method is used to predict the charging demand of electric vehicles. …”
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16337
RETRACTED ARTICLE: Screening and identification of susceptibility genes for cervical cancer via bioinformatics analysis and the construction of an mitophagy-related genes diagnosti...
Published 2024-09-01“…Furthermore, using machine learning algorithms, we constructed a clinical prognostic model and validated and optimized it via extensive clinical data. …”
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16338
A combined immune and exosome-related risk signature as prognostic biomakers in acute myeloid leukemia
Published 2024-12-01“…Notably, the risk model demonstrated significant associations with immune responses and the expression of immune checkpoints.Conclusions An immune-ERG-based risk model was developed to effectively predict prognostic outcomes for AML patients. There is potential for immune therapy in AML targeting the five hub genes.…”
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16339
Modelling key ecological factors influencing the distribution and content of silymarin antioxidant in Silybum marianum L.
Published 2025-01-01“…Results showed that The RF (ROC: 0.99), BRT (ROC: 0.98), and SVM (ROC: 0.96) models were highly accurate in predicting the habitat suitability of S. marianum. The results of the RF algorithm also revealed that factors such as distance from roads, elevation, and mean annual rainfall had the most significant influence on the habitat suitability of S. marianum. …”
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16340
Unlocking the structural, vibrational, electronic, optical and thermoelectric properties of K2X (X=S, Se, Te) monolayers via DFT and ML
Published 2025-09-01“…AFLOW-PLMF model was deployed for the electronic band gap value predictions. Machine learning algorithms namely Decision Tree Regressor and Gradient Boosting Regressor out-performs the other ML models with least root mean square error (RMSE) and accurate R2 values. …”
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