[1]蔡鸿顺,张琼敏,龙颖.面向阿尔茨海默症辅助诊断的多尺度域适应网络[J].智能系统学报,2023,18(5):1090-1098.[doi:10.11992/tis.202205050]
 CAI Hongshun,ZHANG Qiongmin,LONG Ying.Multiscale domain adaptation network for the auxiliary diagnosis of Alzheimer’s disease[J].CAAI Transactions on Intelligent Systems,2023,18(5):1090-1098.[doi:10.11992/tis.202205050]
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面向阿尔茨海默症辅助诊断的多尺度域适应网络

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相似文献/References:
[1]孔伶旭,吴海锋,曾玉,等.迁移学习特征提取的rs-fMRI早期轻度认知障碍分类[J].智能系统学报,2021,16(4):662.[doi:10.11992/tis.202007041]
 KONG Lingxu,WU Haifeng,ZENG Yu,et al.Transfer learning-based feature extraction method for the classification of rs-fMRI early mild cognitive impairment[J].CAAI Transactions on Intelligent Systems,2021,16():662.[doi:10.11992/tis.202007041]

备注/Memo

收稿日期:2022-5-30。
基金项目:重庆市教委科学技术研究项目(KJQN202101116);重庆市研究生科研创新项目(CYS22660);重庆理工大学校级联合项目(gzlcx20223193).
作者简介:蔡鸿顺,硕士研究生,主要研究方向为迁移学习和图像处理;张琼敏,博士,讲师,主要研究方向为医学图像/信号处理与分析、多任务学习、多模态融合建模、计算机辅助诊断。主持重庆市自然科学基金等科技项目4项,作为项目主要研究人员参与国家及省部级自然科学基金项目9项,在国内外重要期刊上发表学术论 文10余篇。;龙颖,硕士研究生,主要研究方向为深度学习和图像处理
通讯作者:张琼敏.E-mail:zqm@cqut.edu.cn

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