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Allan Halpern

Showing results (51-60 of 54) with videos related to

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Journal of Nuclear Medicine : Official Publication, Society of Nuclear Medicine|October 15, 2021
Combined PARP1-Targeted Nuclear Contrast and Reflectance Contrast Enhance Confocal Microscopic Detection of Basal Cell CarcinomaAditi Sahu, Jose Cordero, Xiancheng Wu, et al.
The Lancet. Oncology|June 16, 2019
Comparison of the accuracy of human readers versus machine-learning algorithms for pigmented skin lesion classification: an open, web-based, international, diagnostic studyPhilipp Tschandl, Noel Codella, Bengü Nisa Akay, et al.
Nature Communications|September 9, 2022
In vivo tumor immune microenvironment phenotypes correlate with inflammation and vasculature to predict immunotherapy responseAditi Sahu, Kivanc Kose, Lukas Kraehenbuehl, et al.
Journal of the American Academy of Dermatology|October 11, 2011
Accuracy in melanoma detection: a 10-year multicenter surveyGiuseppe Argenziano, Lorenzo Cerroni, Iris Zalaudek, et al.
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Showing results (51-60 of 54) with videos related to

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Pageof 6
You have reached the last page of results.This site can display upto 54 results.
Journal of Nuclear Medicine : Official Publication, Society of Nuclear Medicine|October 15, 2021
Combined PARP1-Targeted Nuclear Contrast and Reflectance Contrast Enhance Confocal Microscopic Detection of Basal Cell CarcinomaAditi Sahu, Jose Cordero, Xiancheng Wu, et al.
The Lancet. Oncology|June 16, 2019
Comparison of the accuracy of human readers versus machine-learning algorithms for pigmented skin lesion classification: an open, web-based, international, diagnostic studyPhilipp Tschandl, Noel Codella, Bengü Nisa Akay, et al.
Nature Communications|September 9, 2022
In vivo tumor immune microenvironment phenotypes correlate with inflammation and vasculature to predict immunotherapy responseAditi Sahu, Kivanc Kose, Lukas Kraehenbuehl, et al.
Journal of the American Academy of Dermatology|October 11, 2011
Accuracy in melanoma detection: a 10-year multicenter surveyGiuseppe Argenziano, Lorenzo Cerroni, Iris Zalaudek, et al.
Pageof 6