Medicine and HealthCommunications Biology
Deciphering tumour tissue organization by 3D electron microscopy and machine learning
B. D. D. Senneville, F. Z. Khoubai, et al.
This study by Baudouin Denis de Senneville, Fatma Zohra Khoubai, and their colleagues explored the intricate 3D organization of hepatoblastoma tissues. Utilizing advanced imaging techniques and machine learning, they unveiled fascinating correlations between tumor cell size and their subcellular components, advancing our understanding of tumor architecture.
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