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Tie Liang

Stanford University

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About Tie Liang at Stanford University (Stanford)

Tie Liang is a researcher based at Stanford University. They specialize in Medical Imaging Techniques and Applications, Radiomics and Machine Learning in Medical Imaging, and Photoacoustic and Ultrasonic Imaging, with ongoing contributions to these areas. Their research has drawn over 729 citations, marking them as an increasingly recognized voice in their field. A solid H-index of 16 speaks to the quality and reach of their work.

Research Areas

Medical Imaging Techniques and ApplicationsRadiomics and Machine Learning in Medical ImagingPhotoacoustic and Ultrasonic ImagingProstate Cancer Treatment and ResearchRadiopharmaceutical Chemistry and Applications

Academic Impact Matrix

Research output metrics for Tie Liang aggregated from public academic databases. Student lab experience data is pending.

Academic data verified · April 2026 · Next sync: May 2026

Research Output

Total Citations729

Emerging researcher

Publications74

Selective publication record

h-index16

Developing track record

i10-index26

Early-stage portfolio

Lab Environment

No lab data yet for Tie Liang

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