@book{CTT100901044, author = {Ze Jin and Taiguang Yuan and Yukiko Tokuda and Yasuto Naoi and Noriyuki Tomiyama and Kenji Suzuki}, title = {Radiomics: Approach to Precision Medicine}, publisher = {Springer}, year = 2022, } @inproceedings{CTT100911599, author = {Yuqiao Yang and Ze Jin and Fumihiko Nakatani and Mototaka Miyake and Kenji Suzuki}, title = {“Small-data” Patch-wise Multi-dimensional Output Deep-learning for Rare Cancer Diagnosis in MRI under Limited Sample-size Situation}, booktitle = {}, year = 2024, } @inproceedings{CTT100907908, author = {Kodera S. and Rahmaniar W. and Oshibe H. and Jin Z. and Watadani T. and Abe O. and Suzuki K.}, title = {Super-Efficient Lung Nodule Classification Using Massive-Training Artificial Neural Network (MTANN) Compact Model on LIDC-IDRI Database}, booktitle = {}, year = 2024, } @inproceedings{CTT100911586, author = {井原拓哉 and 脇智彦 and 藤田浩二 and Li Chenggeer and Ze Jin and 押部弘子 and 鈴木賢治}, title = {スモールデータ深層学習を用いた単純X 線画像での舟状骨骨折検知AI システムの開発}, booktitle = {}, year = 2024, } @inproceedings{CTT100911585, author = {染谷健太郎 and 小寺昇冴 and 押部弘子 and 靳泽 and 鈴木賢治}, title = {CTにおける複数のMTANNを組み合わせた肺結節のセグメンテーション}, booktitle = {}, year = 2024, } @inproceedings{CTT100907904, author = {Yang Y. and Jin Z. and Suzuki K.}, title = {Federated learning - Game changing AI concept to train AI without sending patient data out from hospitals}, booktitle = {}, year = 2023, } @inproceedings{CTT100907907, author = {Yang Y. and Jin Z. and Nakatani F. and Miyake M. and Suzuki K.}, title = {Development of a small-data deep-learning model based on an MTANN for soft tissue sarcoma diagnosis in MRI}, booktitle = {}, year = 2023, } @inproceedings{CTT100907906, author = {Jin Z. and Pang M. and Qu T. and Oshibe H. and Sasage R. and Suzuki K.}, title = {Feature Map Visualization for Explaining Black-Box Deep Learning Model in Liver Tumor Segmentation}, booktitle = {}, year = 2023, } @inproceedings{CTT100907905, author = {Yang S. and Xiang M. and Qu T. and Jin Z. and Suzuki K.}, title = {Reconstruction of Fast Acquisition MRI with Under-sampled K-space Data by Using Massive-Training Artificial Neural Networks (MTANNs)}, booktitle = {}, year = 2023, } @inproceedings{CTT100904973, author = {Ze Jin and Maolin Pang and Yuqiao Yang and Fahad Parvez Mahdi and Tianyi Qu and Ren Sasage and Kenji Suzuki}, title = {Explaining Massive-Training Artificial Neural Networks in Medical Image Analysis Task Through Visualizing Functions Within the Models}, booktitle = {Lecture notes in computer science, LNCS}, year = 2023, } @inproceedings{CTT100891312, author = {Yang S. and Xiang M. and Qu T. and Jin Z. and Suzuki K.}, title = {Under-sampled Image Reconstruction in Fast Acquisition MRI with Massive-Training Artificial Neural Networks (MTANNs) Deep Learning Approach}, booktitle = {}, year = 2023, } @inproceedings{CTT100891310, author = {Deng Z. and Jin Z. and Suzuki K.}, title = {Radiation Dose Reduction in Digital Breast Tomosynthesis by MTANN with Multi-scale Kernels}, booktitle = {}, year = 2023, } @inproceedings{CTT100898547, author = {Pang M. and Jin Z. and Qu T. and Mahdi F. P. and Sasage R. and Suzuki K.}, title = {Functional Model Visualization for Explaining Massive-Training Artificial Neural Network for Liver Tumor Segmentation}, booktitle = {}, year = 2023, } @inproceedings{CTT100891311, author = {Yang Y. and Jin Z. and Nakatani F. and Miyake M. and Suzuki K.}, title = {AI-aided Diagnosis of Rare Soft-Tissue Sarcoma by Means of Massive-Training Artificial Neural Network (MTANN)}, booktitle = {}, year = 2023, } @inproceedings{CTT100891309, author = {Xu L. and Mahdi F. P. and Jin Z. and Noguchi Y. and Murata M. and Suzuki K.}, title = {Generating simulated fluorescence images for enhancing proteins from optical microscopy images of cells using massive-training artificial neural networks}, booktitle = {Proceedings of SPIE}, year = 2023, } @inproceedings{CTT100887257, author = {Zhipeng Deng and Ze Jin and Kenji Suzuki}, title = {Radiation Dose Reduction in Digital Breast Tomosynthesis (DBT) by Means of Multi-scale-Kernel Massive-Training Artificial Neural Network (MTANN) for Generating Virtual High-Dose Images}, booktitle = {}, year = 2023, } @inproceedings{CTT100881599, author = {Zhipeng Deng and Yuqiao Yang and Ze Jin and Kenji Suzuki}, title = {FedAL: An Federated Active Learning Framework for Efficient Labeling in Skin Lesion Analysis}, booktitle = {}, year = 2022, } @inproceedings{CTT100881601, author = {Yuqiao Yang and Ze Jin and Kenji Suzuki}, title = {Federated Tumor Segmentation with Patch-wise Deep Learning Model}, booktitle = {}, year = 2022, } @inproceedings{CTT100879354, author = {Yuqiao Yang and Ze Jin and Kenji Suzuki}, title = {Federated Learning Coupled with Massive-Training Artificial Neural Networks in Tumor Segmentation in CT Images.}, booktitle = {}, year = 2022, } @inproceedings{CTT100862832, author = {Sato M. and Yang Y. and Jin Z. and Suzuki K.}, title = {Segmentation of Liver Tumor in Hepatic CT by Using MTANN Deep Learning with Small Training Dataset Size}, booktitle = {}, year = 2021, } @inproceedings{CTT100862831, author = {Onai Y. and Mahdi F. P. and Jin Z. and Suzuki K.}, title = {Virtual High-Radiation-Dose Image Generation from Low-Radiation-Dose Image in Digital Breast Tomosynthesis (DBT) Using Massive-Training Artificial Neural Network (MTANN)}, booktitle = {}, year = 2021, } @inproceedings{CTT100862830, author = {Xiang M. and Jin Z. and Suzuki K.}, title = {Massive-Training Artificial Neural Network (MTANN) for Image Quality Improving in Fast-Acquisition MRI of the Knee}, booktitle = {}, year = 2021, } @inproceedings{CTT100862828, author = {Sato M. and Jin Z. and Suzuki K.}, title = {Semantic Segmentation of Liver Tumor in Contrast-enhanced Hepatic CT by Using Deep Learning with Hessian-based Enhancer with Small Training Dataset Size}, booktitle = {}, year = 2021, } @inproceedings{CTT100862829, author = {Xiang M. and Jin Z. and Suzuki K.}, title = {Massive-Training Artificial Neural Network (MTANN) with Special Kernel for Artifact Reduction In Fast-Acquisition MRI of the Knee}, booktitle = {}, year = 2021, } @inproceedings{CTT100845007, author = {Sato M. and Jin Z. and Suzuki K.}, title = {Small-Training-Set Deep Learning for Semantic Segmentation of Liver Tumors in Contrast-enhanced Hepatic CT}, booktitle = {}, year = 2021, } @inproceedings{CTT100845008, author = {Onai Y. and Jin Z. and Suzuki K.}, title = {Generation of Virtual High-Radiation-Dose Images from Low-Dose Images in Digital Breast Tomosynthesis (DBT) with Massive-Training Artificial Neural Network (MTANN)}, booktitle = {}, year = 2021, } @inproceedings{CTT100845006, author = {Xiang M. and Jin Z. and Suzuki K.}, title = {Fast Acquisition MRI of the Knee by Means of Massive-Training Artificial Neural Network (MTANN) with Special Kernel}, booktitle = {}, year = 2021, } @inproceedings{CTT100828643, author = {Taiguang Yuan and Ze Jin and Yukiko Tokuda and Yasuto Naoi and Noriyuki Tomiyama and Takashi Obi and Kenji Suzuki}, title = {Prediction of Genetically-Evaluated Tumour Responses to Chemotherapy from Breast MRI using Machine Learning with Model Selection}, booktitle = {Journal of Physics: Conference Series}, year = 2020, } @inproceedings{CTT100828642, author = {Taiguang Yuan and Ze Jin and Tokuda Y. and Naoi Y. and Tomiyama N. and Kenji Suzuki}, title = {MR Imaging biomarkers for Prediction of Genetic Assessment for Breast Cancer Recurrence: A Radiogenomics Study}, booktitle = {IEICE Technical Report}, year = 2020, } @inproceedings{CTT100828645, author = {Yuchen Wang and Ze Jin and Tokuda Y. and Naoi Y. and Tomiyama N. and Kenji Suzuki}, title = {Neural Network Convolution Deep Learning for Semantic Segmentation of Breast Tumor in MRI}, booktitle = {Proceeding of 4th International Symposium on Biomedical Engineering (ISBE2019)}, year = 2019, } @inproceedings{CTT100828644, author = {Taiguang Yuan and Ze Jin and Tokuda Y. and Naoi Y. and Tomiyama N. and Kenji Suzuki}, title = {Discovery of MR Imaging Biomarkers for Prediction of Pathological Complete Responses to Chemotherapy for Breast Cancer}, booktitle = {Proceeding of 4th International Symposium on Biomedical Engineering (ISBE2019)}, year = 2019, } @inproceedings{CTT100828647, author = {Taiguang Yuan and Ze Jin and Tokuda, Y. and Naoi, Y. and Tomiyama, N. and Kenji Suzuki}, title = {Development of deep-learning segmentation for breast cancer in mr images based on neural network convolution}, booktitle = {Proceedings of the 2019 8th International Conference on Computing and Pattern Recognition}, year = 2019, } @misc{CTT100844665, author = {Onai Y. and Jin Z. and Obi T. and Suzuki K.}, title = {Neural Network Convolution (NNC) Deep Learning for Radiation Dose Reduction in Digital Breast Tomosynthesis (DBT)}, year = 2020, } @misc{CTT100884605, author = {鈴木賢治 and JINZE}, title = {画像処理装置、画像処理方法及びプログラムが格納された非一時的なコンピュータ可読媒体}, howpublished = {公開特許}, year = 2022, month = {}, note = {PCT/JP2022/008813(2022/03/02), WO 2022/186263(2022/09/09)} }