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Ming Y. Lu

Massachusetts Institute of Technology

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About Ming Y. Lu at Massachusetts Institute of Technology (MIT)

Ming Y. Lu holds an academic position at Massachusetts Institute of Technology. Their scholarly work centers on AI in cancer detection, Radiomics and Machine Learning in Medical Imaging, and Digital Imaging for Blood Diseases. With over 8,571 citations to their name, their contributions have had a measurable and lasting impact on the field. An H-index of 39 underscores the consistent quality and influence of their published research.

Research Areas

AI in cancer detectionRadiomics and Machine Learning in Medical ImagingDigital Imaging for Blood DiseasesArtificial Intelligence in Healthcare and EducationCell Image Analysis Techniques

Academic Impact Matrix

Research output metrics for Ming Y. Lu aggregated from public academic databases. Student lab experience data is pending.

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

Research Output

Total Citations8,571

Above average

Publications144

Selective publication record

h-index39

Established scholar

i10-index66

Growing portfolio

Lab Environment

No lab data yet for Ming Y. Lu

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