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乳腺癌影像组学的研究进展(3)
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摘要:8 总结 目前乳腺癌MRI 影像组学领域迅速发展,主要应用于良恶性鉴别、受体和分子分型分类、淋巴结转移、疗效评估及预后方面的研究。然而,目前影像
8 总结
目前乳腺癌MRI 影像组学领域迅速发展,主要应用于良恶性鉴别、受体和分子分型分类、淋巴结转移、疗效评估及预后方面的研究。然而,目前影像组学多为单中心、单模态研究,数据量通常较小,且传统机器学习方法,干扰因素较多,效率较低,未来影像组学正向多中心、多尺度、多模态及深度学习方向发展。
作者利益冲突声明:全体作者均声明无利益冲突。
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