3D reconstruction of skin and spatial mapping of immune cell density, vascular distance and effects of sun exposure and aging
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Y. Al-Kofahi | A. Corwin | Yingnan Ju | C. Surrette | A. Sood | Sanghee Cho | E. McDonough | F. Ginty | S. Ghose | A. Karunamurthy | L. Falo | Jessica S Martinez | Chrystal Chadwick | Katy Börner | Erich Williams | Jonhan Ho | Rachel Rose | Jessica Martinez | Eric Williams | Yousef Al-Kofahi | R. Rose | Christine Surrette
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