Jason Causey Data-verified
Affiliation confirmed via AI analysis of OpenAlex, ORCID, and web sources.
Associate Professor
faculty
Research Areas
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Biography and Research Information
OverviewAI-generated summary
Jason Causey's research program investigates the application of advanced computational techniques, including deep learning and machine learning, to diverse scientific challenges. His work spans medical imaging analysis, such as segmenting kidney tumors from CT scans and classifying sex from 3D skull images, as well as agricultural applications like predicting rice yield variation using drone imagery. Causey has also contributed to studies on predicting COVID-19 diagnosis and hospitalization, and on genotype-by-environment interactions for maize yield estimation. His scholarship metrics include an h-index of 12, with 37 total publications and 512 citations. He frequently collaborates with researchers at Arkansas State University, including Jake Qualls, Jennifer Fowler, and Emily S. Bellis, with whom he has co-authored multiple publications.
Metrics
- h-index: 12
- Publications: 37
- Citations: 526
Selected Publications
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Global genotype by environment prediction competition reveals that diverse modeling strategies can deliver satisfactory maize yield estimates (2024)
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Manifold and spatiotemporal learning on multispectral unoccupied aerial system imagery for phenotype prediction (2024)
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Global Genotype by Environment Prediction Competition Reveals That Diverse Modeling Strategies Can Deliver Satisfactory Maize Yield Estimates (2024)
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Sex classification of 3D skull images using deep neural networks (2024)
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Single protein encapsulated SN38 for tumor-targeting treatment (2023)
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Single Protein Encapsulated SN38 for Tumor-Targeting Treatment (2023)
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Study COVID-19 Severity of Patients Admitted to Emergency Room (ER) with Chest X-ray Images (2022)
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Study the combination of brain MRI imaging and other datatypes to improve Alzheimer’s disease diagnosis (2022)
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COVID19 Diagnosis Using Chest X-rays and Transfer Learning (2022)
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Detecting Intra-Field Variation in Rice Yield With Unmanned Aerial Vehicle Imagery and Deep Learning (2022)
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Identify differentially expressed genes with large background samples (2021)
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A Continuously Benchmarked and Crowdsourced Challenge for Rapid Development and Evaluation of Models to Predict COVID-19 Diagnosis and Hospitalization (2021)
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An Ensemble of U-Net Models for Kidney Tumor Segmentation With CT Images (2021)
Collaboration Network
Top Collaborators
- Detecting Intra-Field Variation in Rice Yield With Unmanned Aerial Vehicle Imagery and Deep Learning
- An Ensemble of U-Net Models for Kidney Tumor Segmentation With CT Images
- Single protein encapsulated SN38 for tumor-targeting treatment
- Sex classification of 3D skull images using deep neural networks
- COVID19 Diagnosis Using Chest X-rays and Transfer Learning
Showing 5 of 10 shared publications
- An Ensemble of U-Net Models for Kidney Tumor Segmentation With CT Images
- Sex classification of 3D skull images using deep neural networks
- COVID19 Diagnosis Using Chest X-rays and Transfer Learning
- Study the combination of brain MRI imaging and other datatypes to improve Alzheimer’s disease diagnosis
- Identify differentially expressed genes with large background samples
Showing 5 of 7 shared publications
- An Ensemble of U-Net Models for Kidney Tumor Segmentation With CT Images
- COVID19 Diagnosis Using Chest X-rays and Transfer Learning
- Study the combination of brain MRI imaging and other datatypes to improve Alzheimer’s disease diagnosis
- Identify differentially expressed genes with large background samples
- Identify differentially expressed genes with large background samples
Showing 5 of 6 shared publications
- An Ensemble of U-Net Models for Kidney Tumor Segmentation With CT Images
- COVID19 Diagnosis Using Chest X-rays and Transfer Learning
- Study the combination of brain MRI imaging and other datatypes to improve Alzheimer’s disease diagnosis
- Identify differentially expressed genes with large background samples
- Study COVID-19 Severity of Patients Admitted to Emergency Room (ER) with Chest X-ray Images
- An Ensemble of U-Net Models for Kidney Tumor Segmentation With CT Images
- COVID19 Diagnosis Using Chest X-rays and Transfer Learning
- Study the combination of brain MRI imaging and other datatypes to improve Alzheimer’s disease diagnosis
- Identify differentially expressed genes with large background samples
- Identify differentially expressed genes with large background samples
- An Ensemble of U-Net Models for Kidney Tumor Segmentation With CT Images
- Identify differentially expressed genes with large background samples
- Identify differentially expressed genes with large background samples
- Detecting Intra-Field Variation in Rice Yield With Unmanned Aerial Vehicle Imagery and Deep Learning
- COVID19 Diagnosis Using Chest X-rays and Transfer Learning
- Manifold and spatiotemporal learning on multispectral unoccupied aerial system imagery for phenotype prediction
- COVID-19 Transfer, Mobility, and Progress: First Look Spring 2021 Report. Third in the Series.
- High School Benchmarks: COVID-19 Special Analysis. Update & Correction. National College Progression Rates.
- COVID-19 Transfer, Mobility, and Progress: First Look Spring 2021 Report. Third in the Series.
- High School Benchmarks: COVID-19 Special Analysis. Update & Correction. National College Progression Rates.
- Detecting Intra-Field Variation in Rice Yield With Unmanned Aerial Vehicle Imagery and Deep Learning
- Manifold and spatiotemporal learning on multispectral unoccupied aerial system imagery for phenotype prediction
- Single protein encapsulated SN38 for tumor-targeting treatment
- Single Protein Encapsulated SN38 for Tumor-Targeting Treatment
- Single protein encapsulated SN38 for tumor-targeting treatment
- Single Protein Encapsulated SN38 for Tumor-Targeting Treatment
- Single protein encapsulated SN38 for tumor-targeting treatment
- Single Protein Encapsulated SN38 for Tumor-Targeting Treatment
- Single protein encapsulated SN38 for tumor-targeting treatment
- Single Protein Encapsulated SN38 for Tumor-Targeting Treatment
- Single protein encapsulated SN38 for tumor-targeting treatment
- Single Protein Encapsulated SN38 for Tumor-Targeting Treatment
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