Srivathsa Pasumarthi: h-index, Total Citations, and Citation Map
Srivathsa Pasumarthi's h-index is 5 (3 i10-index, 288+ total citations across 28+ publications) according to Google Scholar as of June 2026. Srivathsa Pasumarthi is affiliated with Subtle Medical Inc..
Srivathsa Pasumarthi is a researcher affiliated with Subtle Medical Inc., specializing in Deep Learning, Medical Imaging, MRI. Their work has been cited 288 times. This profile visualizes their global influence, highlighting strong citation networks in China.
Srivathsa Pasumarthi's Citation Metrics
Bibliometric impact based on 28 indexed publications.
- H-Index
- 5
- i10-Index
- 3
- Total Citations
- 288
- Citing Countries
- 29
As of June 2026.
Srivathsa Pasumarthi has an h-index of 5 and 288 total citations across 28 publications, with research cited by institutions in 29 countries.
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Top Cited Works
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One model to synthesize them all: Multi-contrast multi-scale transformer for missing data imputation
2023139
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Top Citing Institutions
Visa Evidence Package
Views and exports tuned for EB-1A, O-1A, and EB-2 NIW petitions. Sustained acclaim, geographic reach, and independent-citation filtering are the strongest evidence categories immigration adjudicators look for.
Significant Contributions
Auto-detected research lines — a seminal paper and the follow-up work building on it. Review and edit before using in a petition. Each Free PDF opens in a new tab — EB-1A organises this into the structure USCIS applies to Criterion 5 of 8 CFR § 204.5(h)(3)(v); EB-1B re-frames it under § 204.5(i)(3) (outstanding researcher); NIW presents it under prong 2 of Matter of Dhanasar.
5 citing papers could not be classified (no author data) — excluded from the percentages above.
The researcher developed a progressive deep learning framework for MRI synthesis and imputation, starting with reduced-dose contrast models and expanding to multi-contrast transformers and physics-grounded pre-contrast synthesis.
The researcher developed deep learning methods to minimize gadolinium-based contrast agent dosage in brain MRI, a contribution validated by 52 citations and 91% independent uptake.
Citation trend (last 10 years)Click to expand
Citation Trend (Last 10 Years)
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