Prediction of treating response for breast cancer by multi-phase MRI histogram arrays
Specialists' Article|更新时间:2026-01-15
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Prediction of treating response for breast cancer by multi-phase MRI histogram arrays
“The research team of Peking University Cancer Hospital has developed a new method to predict the pathological complete remission of breast cancer after neoadjuvant chemotherapy through multiphase enhanced magnetic resonance images, providing a basis for individualized treatment.”
ZHU Haitao, LI Xiaoting, QU Yuhong, et al. Prediction of treating response for breast cancer by multi-phase MRI histogram arrays[J]. Oncoradiology, 2025, 34(6): 562-573.
DOI:
ZHU Haitao, LI Xiaoting, QU Yuhong, et al. Prediction of treating response for breast cancer by multi-phase MRI histogram arrays[J]. Oncoradiology, 2025, 34(6): 562-573. DOI: 10.19732/j.cnki.2096-6210.2025.06.002.
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