Curriculum Vitaes

Naomi Yagi

  (八木 直美)

Profile Information

Affiliation
Associate Professor, Advanced Medical Engineering Research Institute, University of Hyogo
Degree
Ph. D(Mar, 2014, University of Hyogo)

J-GLOBAL ID
201401020876802456
researchmap Member ID
7000009906

Papers

 57
  • Rashedur Rahman, Naomi Yagi, Keigo Hayashi, Akihiro Maruo, Hirotsugu Muratsu, Syoji Kobashi
    Scientific reports, 14(1) 8004-8004, Apr 5, 2024  Peer-reviewed
    Pelvic fractures pose significant challenges in medical diagnosis due to the complex structure of the pelvic bones. Timely diagnosis of pelvic fractures is critical to reduce complications and mortality rates. While computed tomography (CT) is highly accurate in detecting pelvic fractures, the initial diagnostic procedure usually involves pelvic X-rays (PXR). In recent years, many deep learning-based methods have been developed utilizing ImageNet-based transfer learning for diagnosing hip and pelvic fractures. However, the ImageNet dataset contains natural RGB images which are different than PXR. In this study, we proposed a two-step transfer learning approach that improved the diagnosis of pelvic fractures in PXR images. The first step involved training a deep convolutional neural network (DCNN) using synthesized PXR images derived from 3D-CT by digitally reconstructed radiographs (DRR). In the second step, the classification layers of the DCNN were fine-tuned using acquired PXR images. The performance of the proposed method was compared with the conventional ImageNet-based transfer learning method. Experimental results demonstrated that the proposed DRR-based method, using 20 synthesized PXR images for each CT, achieved superior performance with the area under the receiver operating characteristic curves (AUROCs) of 0.9327 and 0.8014 for visible and invisible fractures, respectively. The ImageNet-based method yields AUROCs of 0.8908 and 0.7308 for visible and invisible fractures, respectively.
  • Tasuku Honda, Hirohisa Murakami, Hiroshi Tanaka, Yoshikatsu Nomura, Toshihito Sakamoto, Naomi Yagi
    Surgery today, Mar 4, 2024  Peer-reviewedLast author
    PURPOSE: This study examined the impact of frailty and prefrailty on mid-term outcomes and rehabilitation courses after cardiac surgery. METHODS: A total of 261 patients (median age: 73 years; 30% female) who underwent elective cardiac surgery were enrolled in this study. The Japanese version of the Cardiovascular Health Study Frailty Index classified 86, 131, and 44 patients into frailty, prefrailty, and robust groups, respectively. We examined the recovery of walking ability, outcomes at discharge, mid-term all-cause mortality, and rehospitalization related to major adverse cardiovascular and cerebrovascular events (MACCE) across the three cohorts. RESULTS: The 3-year survival rates in the frailty, prefrailty, and robust groups were 87%, 97%, and 100%, respectively (p = 0.003). The free event rates of all-cause mortality and re-hospitalization related to MACCE were 59%, 79%, and 95%, respectively (p < 0.001), with a graded elevation in adjusted morbidity among patients in the prefrailty (hazard ratio [HR], 4.57; 95% confidence interval [CI], 1.08-19.4) and frailty (HR, 9.29; 95% CI 2.21-39.1) groups. Patients with frailty also experienced a delayed recovery of walking ability and a reduced number of patients with frailty were discharged home. CONCLUSION: Frailty and prefrailty adversely affect the mid-term prognosis and rehabilitation course after cardiac surgery.
  • Rashedur Rahman, Naomi Yagi, Keigo Hayashi, Akihiro Maruo, Hirotsugu Muratsu, Syoji Kobashi
    Journal of Advanced Computational Intelligence and Intelligent Informatics, 27(6) 1079-1085, Nov, 2023  Peer-reviewed
  • Naomi Yagi, Yutaka Hata, Yoshitada Sakai
    Journal of Advanced Computational Intelligence and Intelligent Informatics, 27(5) 848-854, Sep, 2023  Peer-reviewedLead authorCorresponding author
  • T. Ueyama, N. Yagi, Y. Fujii, H. Shibutani, Y. Kobayashi, Y. Saji, Y. Sakai, Y. Hata
    ICMLC & ICWAPR 2023, Jul, 2023  Peer-reviewed

Misc.

 31
  • 八木 直美
    日本バイオレオロジー学会誌(B&R), 37(2) 9-14, Apr, 2024  Lead authorCorresponding author
  • 岡本 一伯, 森 健太郎, 徳永 義光, 佐久本 哲郎, 八木 直美, 畑 豊
    バイオメディカル・ファジィ・システム学会年次大会講演論文集, 35回 np1-np4, Dec, 2022  
  • 小橋 昌司, 杉山 宗弘, 鵜飼 和歳, ラシェドーララーマン, 八木 直美, 林 圭吾, 圓尾 明弘, 村津 裕嗣
    日本医学放射線学会秋季臨床大会抄録集, 59回 S450-S450, Sep, 2022  
  • 山本侃利, 藤田大輔, RAHMAN Rashedur, 八木直美, 林圭吾, 圓尾明宏, 村津裕嗣, 小橋昌司
    電子情報通信学会技術研究報告(Web), 121(347(MI2021 42-89)), Mar, 2022  
  • Takumi Ueyama, Yohei Kumabe, Keisuke Oe, Tomoaki Fukui, Takahiro Niikura, Ryosuke Kuroda, Masakazu Morimoto, Naomi Yagi, Yutaka Hata
    International Conference on Machine Learning and Cybernetics(ICMLC), 259-264, 2022  Peer-reviewed
  • Kohei Hayashi, Naomi Yagi, Yutaka Hata, Yoshiaki Saji, Yoshitada Sakai
    International Conference on Machine Learning and Cybernetics(ICMLC), 254-258, 2022  Peer-reviewed
  • Naomi Yagi, Yutaka Hata, Yoshitada Sakai
    International Conference on Machine Learning and Cybernetics(ICMLC), 204-208, 2022  Peer-reviewedLead author
  • Naoto Yamamoto, Daisuke Fujita, Md. Rashedur Rahman, Naomi Yagi, Keigo Hayashi, Akihiro Maruo, Hirotsugu Muratsu, Syoji Kobashi
    4th IEEE Global Conference on Life Sciences and Technologies(LifeTech), 170-171, 2022  Peer-reviewed
  • 山本 侃利, 藤田 大輔, Rahman Rashedur, 八木 直美, 林 圭吾, 圓尾 明宏, 村津 裕嗣, 小橋 昌司
    日本医用画像工学会大会予稿集, 40回 203-207, Oct, 2021  
    骨粗鬆症による高齢者脆弱性骨盤骨折は,外傷に因らず,自覚症状が顕著でなく,CT画像上でその検出が容易ではないため,発見後の治療が遅れ,転位が進行し,機能的予後回復が得られない場合がある.そこで,医師の診断能向上のため,CT画像から骨盤脆弱性骨折を自動的に検出する医師の診断支援システムが求められている.従来手法では,単純X線画像やCT画像による2次元画像解析に基づくため,3次元的に分布する微小な脆弱性骨折の検出が困難であった.そこで我々は,新しい手法として,3次元CT画像を用いて,骨表から骨内部にかけて3次元的に骨折有無を探索するボーリング調査法を模した自動骨盤骨折検出法(BSFD法;boring survey based fracture detection)を提案した.本研究では,BSFD法における特徴量抽出法について検討する.BSFD法では,3次元CT画像から骨表同値面を求め,同値面上の各点にCT値で構成される3次元特徴ベクトルを割り当て,学習済みの3次元畳み込みニューラルネットワーク(CNN)モデルにより,各点において骨折確率を求める.各点でアノテーションされた骨折領域からの3次元Chamfer距離から求められた骨折確率を用いて,CNNを学習する.ここで,3次元特徴ベクトルに関して,領域範囲の拡大を比較検討して,検出性能を評価する.提案手法を110人の被験者のデータで検証した結果,学習データではAUC0.90,評価データではAUC0.84を確認した.(著者抄録)
  • 圓尾 明弘, 林 圭吾, 井口 貴雄, 村津 裕嗣, 鵜飼 和歳, 八木 直美, 小橋 昌司
    骨折, 43(Suppl.) S82-S82, Jul, 2021  
  • Yuma Iseri, Yutaka Hata, Naomi Yagi, Yoshiaki Saji, Yoshitada Sakai
    2021 World Automation Congress(WAC), 248-253, 2021  Peer-reviewed
  • Shuri Nakamura, Yutaka Hata, Naomi Yagi, Naoko Kawamura, Hideki Kashioka, Toshio Yanagida, Masayuki Hirata, Hitoshi Maezawa, Yoshitada Sakai
    5th IEEE International Conference on Cybernetics(CYBCONF), 73-78, 2021  Peer-reviewed
  • 山本侃利, 藤田大輔, RAHMAN Rashedur, 八木直美, 林圭吾, 圓尾明宏, 村津裕嗣, 小橋昌司
    ファジィシステムシンポジウム講演論文集(CD-ROM), 37th, 2021  
  • 山本侃利, RASHEDUR Rahman, 八木直美, 林圭吾, 丸尾明宏, 村津裕嗣, 小橋昌司
    日本生体医工学会大会プログラム・抄録集(Web), 60th, 2021  
  • 圓尾明弘, 林圭吾, 井口貴雄, 村津裕嗣, 鵜飼数歳, 八木直美, 小橋昌司
    骨折(Web), 43(Supplement (CD-ROM)), 2021  
  • MOTOKI Kota, MAHDI Fahad Parvez, YAGI Naomi, NII Manabu, KOBASHI Syoji
    Proceedings of the Annual Conference of Biomedical Fuzzy Systems Association, 33 30-35, Oct 31, 2020  
    Enormous number of panoramic X-ray images are checked by dentists every day. It needs much time for dentists and may cause interpretation errors. There are some studies on teeth detection with deep learning. However, object detection using deep learning provides multiple candidates, and it is not east to select one from the candidates. This paper proposes an automatic teeth recognition method, which refines the candidates by an optimization method with prior knowledge model. At first the proposed method detects teeth candidates by faster R-CNN, which is one of the deep learning-based techniques. Next, it determines the best candidate by optimizing an objective function. The objective function evaluates the relative position of the teeth based on prior knowledge model. With 1000 images, the accuracy of the proposed method was 0.94. It is higher than 0.92 that is without optimization. The proposed method performs the better recognition accuracy in comparison with the method without optimization step.
  • 山本 侃利, Rahman Rashedur, 八木 直美, 林 圭吾, 丸尾 明宏, 村津 裕嗣, 小橋 昌司
    バイオメディカル・ファジィ・システム学会年次大会講演論文集, 33回 36-42, Oct, 2020  
    撮影された横断CT画像から骨盤部分に対して骨折を自動検出する手法を提案した。提案法を103症例の被験者データに適用した。まず、学習データ生成のため、立体表面に対する新しいアノテーション法として立体アノテーション法を考案した。これにより、複数断面画像に連続する三次元的な骨折を効率的にアノテーションすることが可能とした。次に、骨折の自動検出法として骨表面から骨内部のCT値分布を特徴ベクトル化する手法を提案し、これをCNNによりクラス識別する新しい骨折検出法を提案した。各被験者において骨折クラスデータ数と非骨折クラスデータ数は異なり、総数で骨折クラスデータが約174000個、非骨折クラスデータは約294000個であった。検出精度結果はtrainingで95.0%、validationで69.4%となった。また、訓練データにおいて適合率96.6%、再現率89.7%、特異度98.2%となり、検証データでは適合率60.0%、再現率60.4%、特異度75.0%であった。
  • 小橋昌司, 八木直美, 平中崇文
    臨床整形外科, 55(8), 2020  
  • 大江啓介, 隈部洋平, 新倉隆宏, 福井友章, 黒田良祐, 畑豊, 森本雅和, 八木直美, 小矢美晴
    日本整形外科学会雑誌, 94(8) S1918-S1918, 2020  
  • KUBO Yuki, NII Manabu, MUTO Tomoyuki, TANAKA Hiroshi, IUNI Hiroaki, YAGI Naomi, NOBUHARA Katsuya, KOBASHI Syoji
    Proceedings of the Annual Conference of Biomedical Fuzzy Systems Association, 32 B2-2, Nov 23, 2019  
    Currently, artificial humeral head is designed primarily by scaling the average shape of anatomical data. It causes a problem that the range of motion (ROM) of the shoulder is limited with the artificial shoulder joint. Improvement of similarity of artificial shoulder joint with actual one may increase the ROM. For the purpose, we previously proposed a method for constructing a statistical shape model (SSM) of the humeral head that represents the inter-individual variation of the humeral head shape using principal component analysis (PCA). In this study, we propose a method to quantitatively evaluate inter-individual variation of humeral head shape by means of shape analysis on the statistical model of humeral head. Firstly, shape analysis is applied to the constructed SSM in order to evaluate inter-individual variation of the humeral head. Next, we evaluate the reproducibility of individual artificial shoulder by the SSM. The experimental results showed that it was possible to grasp the shape characteristics of the group of subjects, and it was possible to find new shape features that were not obtained by the conventional studies with measurement of the subject shape.
  • 八木直美
    IEEE関西支部勉強会・講演会, Sep, 2019  Invited
  • 西尾 祥一, Hossain Belayat, 八木 直美, 新居 学, 平中 崇文, 小橋 昌司
    日本医用画像工学会大会予稿集, 38回 492-497, Jul, 2019  
    整形外科手術は腹腟鏡手術や開腹手術と比較して手術工程および使用する手術器具が多く,外科手術中に医療器具の受け渡しを行う看護師は大きな負担を強いられている.我々は過去に人工膝関節置換術を対象とした整形外科手術における手術室看護師を支援するためのナビゲーションシステムを提案した.この研究では畳み込みニューラルネットワークを用いて手術画像全体に基づいた画像認識により手術工程の認識を試みたが,実用化に必要とされる精度には及ばなかった.本研究では整形外科手術における手術工程の認識精度の改善を実現するために,手術映像から取得したフレーム毎に物体検出(YOLO)を行い,器具のクラス情報と位置座標を検出する.スマートグラス(眼鏡型のデバイス)を用いて記録した整形外科手術映像は手術間で照明環境や撮影角度が大きく異なっており,それらの影響を低減させるための最適なデータの前処理法やデータ拡張法を検討した.(著者抄録)
  • 永見慎輔, 佐藤晋, 越久仁敬, 佐藤篤靖, 田辺直也, 八木直美, 福永真哉, 平井豊博, 室繁郎
    日本呼吸器学会誌(Web), 8, 2019  
  • 八木直美
    立石科学技術振興財団助成研究成果集(Web), (26), 2017  
  • N. Yagi, S. Imawaki, T. Ishikawa, Y. Hata
    Advances in Intelligent Systems and Computing, 137-146, Apr, 2014  Lead author
  • Yagi Naomi, Nagami Shinsuke, Ueno Hiroshi, Yabe Toru, Oke Yoshihiko, Oku Yoshitaka
    Proceedings of the Japan Joint Automatic Control Conference, 57 2002-2005, 2014  
  • 八木直美
    電気評論, 99(12), 2014  
  • Yoshitada Sakai, Akira Hashiramoto, Yoshiko Kawasaki, Takaichi Okano, Takahiro Takeda, Naomi Yagi, Yutaka Hata
    ARTHRITIS AND RHEUMATISM, 65 S895-S895, Oct, 2013  
  • YAGI Naomi, OSHIRO Yoshitetsu, ISHIKAWA Osamu, HATA Yutaka
    FAN Symposium : Intelligent System Symposium-fuzzy, AI, neural network applications technologies, 2011(21) 247-250, Sep 1, 2011  
    In the human brain diagnostic system, the imaging of the brain is essential. This paper proposes a YURAGI-Synthesis for brain imaging under the skull. In it, we employ 1.0MHz and 0.5MHz ultrasonic waves. We consider the weighted sum of these waves and attempt to extract the skull depth and image the sulcus under it. We add 1.0MHz and 0.5MHz, and we add the waves of 1.0MHz and Gaussian noise as the YURAGI- Synthesis. As the results, we successfully calculated skull thickness and extracted the sulcus width within the error of 5.86mm and depth within the error of 1.94mm. As for imaging the sulcus under the skull, the highest effectiveness of the synthesized wave is 96.30% when the weight of 0.5MHz waves is 0.60, and the one of YURAGI-Analysis wave is 97.15% when the weight is 0.003. Thus, YURAGI-Synthesis is useful to this study.
  • Yagi Naomi, Oshiro Yoshitetsu, Ishikawa Osamu, Hata Yutaka, Shibanuma Nao
    Proceedings of the Fuzzy System Symposium, 27 317-317, 2011  
    This paper describes an ultrasonic system of selecting most suitable stem for the patients. The joint replacement orthopedic surgery is generally conducted to relieve pain or fix severe physical joint damage as part of hip fracture treatment. A surgical cure for the hip joint disease includes Total Hip Arthroplasty called THA. In our study, we estimate the degree of fitting the stem for the patients. In the surgery, the surgeon adapts for the patient from the small size stem to the larger size stem in turn. At the present time, the stem is selected only by the sense of the surgeon and the knocking sound. Therefore, we suggest the system which selects the suitable stem by using fuzzy logic. We found a correlation between the degree of tightening and the attenuation time of acoustic signal for the knocked sound by a hammer when inserting the stem. The higher tightened degree implies shorter attenuation period. As the results, we successfully determined the suitable stem in comparison to the results obtained from the practical surgery. We indicated the indexes to judge how degree the stem fits in the clinical treatment.

Presentations

 46

Teaching Experience

 10

Research Projects

 12

Academic Activities

 8