Automated Author ProfileSimpson, Kenneth W.
Cornell University
Simpson, Kenneth W.
Current S-Index
Sum of Dataset Indices for all datasets
Average Dataset Index per Dataset
Average Dataset Index per dataset
Total Datasets
Total datasets for this author
Average FAIR Score
Average FAIR Score per dataset
Total Citations
Total citations to the author's datasets
Total Mentions
Total mentions of the author's datasets
S-Index Interpretation
The S-Index (Sharing Index) is a comprehensive metric that represents the cumulative impact of all your datasets. It is calculated as the sum of Dataset Index scores across all your claimed datasets.
What it means:
- A higher S-index indicates greater overall impact of your datasets relative to typical datasets in their fields of research
- The S-Index grows as you add more datasets or as existing datasets gain more citations and mentions
- It provides a single number to track your research data impact over time
Current S-Index: 12.4 (sum of 4 datasets Dataset Index scores)
More information here.
S-Index Over Time
Cumulative Citations Over Time
Cumulative Mentions Over Time
Datasets
Excel files for the data presented in the corresponding manuscript.
Authors
- Nguyen, Ann V. ;
- Shourabi, Arash Yahyazadeh ;
- Yaghoobi, Mohammad ;
- Shiying Zhang ;
- Simpson, Kenneth W. ;
- Abbasporrad, Alireza
Excel files for the data presented in the corresponding manuscript.
Authors
- Nguyen, Ann V. ;
- Shourabi, Arash Yahyazadeh ;
- Yaghoobi, Mohammad ;
- Shiying Zhang ;
- Simpson, Kenneth W. ;
- Abbasporrad, Alireza
Genomic resources for the domestic dog have improved with the widespread adoption of a 173k SNP array platform and updated reference genome. SNP arrays of this density are sufficient for detecting genetic associations within breeds but are underpowered for finding associations across multiple breeds or in mixed-breed dogs, where linkage disequilibrium rapidly decays between markers, even though such studies would hold particular promise for mapping complex diseases and traits. Here we introduce an imputation reference panel, consisting of 365 diverse, whole-genome sequenced dogs and wolves, which increases the number of markers that can be queried in genome-wide association studies approximately 130-fold. Using previously genotyped dogs, we show the utility of this reference panel in identifying potentially novel associations, including a locus on CFA20 significantly associated with cranial cruciate ligament disease, and fine-mapping for canine body size and blood phenotypes, even when causal loci are not in strong linkage disequilibrium with any single array marker. This reference panel resource will improve future genome-wide association studies for canine complex diseases and other phenotypes.
Authors
- Hayward, Jessica J. ;
- White, Michelle E. ;
- Boyle, Michael ;
- Shannon, Laura M ;
- Casal, Margret L. ;
- Castelhano, Marta G. ;
- Center, Sharon A. ;
- Meyers-Wallen, Vicki N. ;
- Simpson, Kenneth W. ;
- Sutter, Nathan B. ;
- Todhunter, Rory J. ;
- Boyko, Adam R.
The domestic dog is becoming an increasingly valuable model species in medical genetics, showing particular promise to advance our understanding of cancer and orthopaedic disease. Here we undertake the largest canine genome-wide association study to date, with a panel of over 4,200 dogs genotyped at 180,000 markers, to accelerate mapping efforts. For complex diseases, we identify loci significantly associated with hip dysplasia, elbow dysplasia, idiopathic epilepsy, lymphoma, mast cell tumour and granulomatous colitis; for morphological traits, we report three novel quantitative trait loci that influence body size and one that influences fur length and shedding. Using simulation studies, we show that modestly larger sample sizes and denser marker sets will be sufficient to identify most moderate- to large-effect complex disease loci. This proposed design will enable efficient mapping of canine complex diseases, most of which have human homologues, using far fewer samples than required in human studies.
Authors
- Hayward, Jessica J. ;
- Castelhano, Marta G. ;
- Oliveira, Kyle C. ;
- Corey, Elizabeth ;
- Balkman, Cheryl ;
- Baxter, Tara L. ;
- Casal, Margret L. ;
- Center, Sharon A. ;
- Fang, Meiying ;
- Garrison, Susan J. ;
- Kalla, Sara E. ;
- Korniliev, Pavel ;
- Kotlikoff, Michael I. ;
- Moise, N. Sydney ;
- Shannon, Laura M. ;
- Simpson, Kenneth W. ;
- Sutter, Nathan B. ;
- Todhunter, Rory J. ;
- Boyko, Adam R.