Updated on 2025/04/26

写真a

 
KATADA Shun
 
Name of department
Faculty of Systems Engineering, Informatics Division
Job title
Lecturer
External link

Education

  • 2020
    -
    2022

    Japan Advanced Institute of Science and Technology   先端科学技術研究科   先端科学技術専攻 博士課程  

  • 2018
    -
    2020

    Japan Advanced Institute of Science and Technology   先端科学技術研究科   先端科学技術専攻 修士課程  

  • 2011
    -
    2014

    University of Tsukuba   Graduate School of Life and Environmental Sciences   生物科学専攻 博士課程  

  • 2009
    -
    2011

    University of Tsukuba   Graduate School of Life and Environmental Sciences   生物科学専攻 修士課程  

  • 2005
    -
    2009

    University of Tsukuba   第二学群   生物学類  

Degree

  • Information science   2022

  • Doctor of Philosophy   2014

Academic & Professional Experience

  • 2025.04
    -
    Now

    Wakayama University   Faculty of Systems Engineering   Junior Associate Professor

  • 2023.04
    -
    2025.03

    Osaka University   The Institute of Scientific and Industrial Research   Specially Appointed Assistant Professor

  • 2021.01
    -
    2023.03

    Kao Corporation   研究開発部門   主任研究員

  • 2014.04
    -
    2020.12

    Kao Corporation   研究開発部門   研究員

Association Memberships

  • Association for Computing Machinery

  • The Japanese Society for Artificial Intelligence

  • Information Processing Society of Japan

Research Areas

  • Informatics / Intelligent informatics

Research Interests

  • Multimodal Interaction

  • Affective Computing

Published Papers

  • Self-Reported Sentiment Estimation with Attention Mechanism to Integrate Time-Series Physiological Signals andWord Sequences

    Shun Katada, Shogo Okada, Kazunori Komatani (Part: Lead author, Corresponding author )

    Transactions of the Japanese Society for Artificial Intelligence ( Japanese Society for Artificial Intelligence )  40 ( 2 ) 1 - 10   2025.03  [Refereed]

    DOI

  • Personalized Sentiment Estimation Based on Recall and Resting Ratio of Frontal EEG

    Shun Katada, Kazunori Komatani (Part: Lead author, Corresponding author )

    ACM International Conference on Multimedia in Asia ( ACM )    1 - 7   2024.12  [Refereed]

    DOI

  • Collecting Human-Agent Dialogue Dataset with Frontal Brain Signal toward Capturing Unexpressed Sentiment

    Shun Katada, Ryu Takeda, Kazunori Komatani (Part: Lead author, Corresponding author )

    Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-Coling)     3518 - 3528   2024.05  [Refereed]

  • Effects of Physiological Signals in Different Types of Multimodal Sentiment Estimation

    Shun Katada, Shogo Okada, Kazunori Komatani (Part: Lead author )

    IEEE Transactions on Affective Computing ( Institute of Electrical and Electronics Engineers (IEEE) )  14 ( 3 ) 2443 - 2457   2023.07  [Refereed]

    DOI

  • Transformer-Based Physiological Feature Learning for Multimodal Analysis of Self-Reported Sentiment

    Shun Katada, Shogo Okada, Kazunori Komatani (Part: Lead author, Corresponding author )

    International Conference on Multimodal Interaction (ICMI)     349 - 358   2022.11  [Refereed]

     View Summary

    One of the main challenges in realizing dialog systems is adapting to a user's sentiment state in real time. Large-scale language models, such as BERT, have achieved excellent performance in sentiment estimation; however, the use of only linguistic information from user utterances in sentiment estimation still has limitations. In fact, self-reported sentiment is not necessarily expressed by user utterances. To mitigate the issue that the true sentiment state is not expressed as observable signals, psychophysiology and affective computing studies have focused on physiological signals that capture involuntary changes related to emotions. We address this problem by efficiently introducing time-series physiological signals into a state-of-the-art language model to develop an adaptive dialog system. Compared with linguistic models based on BERT representations, physiological long short-term memory (LSTM) models based on our proposed physiological signal processing method have competitive performance. Moreover, we extend our physiological signal processing method to the Transformer language model and propose the Time-series Physiological Transformer (TPTr), which captures sentiment changes based on both linguistic and physiological information. In ensemble models, our proposed methods significantly outperform the previous best result (p < 0.05).

    DOI

  • Biosignal-Based User-Independent Recognition of Emotion and Personality with Importance Weighting

    Shun Katada, Shogo Okada (Part: Lead author, Corresponding author )

    Multimedia Tools and Applications ( Springer Science and Business Media {LLC} )  81 ( 21 ) 30219 - 30241   2022.09  [Refereed]

     View Summary

    For modeling human intelligence, understanding emotional intelligence as well as verbal and mathematical intelligence is an important and challenging issue. In affective and personality computing, it has been reported that not only visual and audio signals but also biosignals are useful for estimating emotions and personality. Biosignals are expected to provide additional and less biased information in implicit assessment, but estimation performance can degrade if there are physiological individual differences. In this paper, considering individual physiological differences as a covariate shift, we aimed to improve the performance results in biosignal-based emotion and personality estimations. For this purpose, we constructed importance-weighted logistic regression (IW-LR) and importance-weighted support vector machine (IW-SVM), which mitigate the accuracy degradation due to physiological individual differences in the training data, and compared them with conventional LR and linear SVM (L-SVM) for estimation performance. As a result, most of the IW models outperform conventional models based on electrocardiogram (ECG) and galvanic skin response (GSR) features in emotion estimation. In the personality estimation, the IW method improves the macroaveraged F1-score for all SVM models. The best performing model (GSR model) outperformed the model with the best previously reported macroaveraged F1-score by 1.9% in personality estimation. These results indicate that importance weighting in machine learning models can reduce the effects of individual physiological differences in peripheral physiological responses and contribute to the proposal of a new model for emotion and personality estimations based on biosignals.

    DOI

  • Incorporation of Contextual Information into BERT for Dialog Act Classification in Japanese

    Shun Katada, Kiyoaki Shirai, Shogo Okada (Part: Lead author, Corresponding author )

    International Joint Symposium on Artificial Intelligence and Natural Language Processing (iSAI-NLP) ( IEEE )    2021.12  [Refereed]

     View Summary

    Recently developed Bidirectional Encoder Representations from Transformers (BERT) outperforms the state-of-the-art in many natural language processing tasks in English. Although contextual information is known to be useful for dialog act classification, fine-tuning BERT with contextual information has not been investigated, especially in head final languages such as Japanese. This paper investigates whether BERT with contextual information performs well on dialog act classification in Japanese open-domain conversation. In our proposed model, not only the utterance itself but also the information about previous utterances and turn-taking are taken into account. Results of experiments on a Japanese dialog corpus showed that the incorporation of the contextual information improved the Fl-score by 6.7 points.

    DOI

  • Is She Truly Enjoying the Conversation?: Analysis of Physiological Signals toward Adaptive Dialogue Systems

    Shun Katada, Shogo Okada, Yuki Hirano, Kazunori Komatani (Part: Lead author )

    International Conference on Multimodal Interaction (ICMI) ( ACM )    315 - 323   2020.10  [Refereed]

     View Summary

    In human-agent interactions, it is necessary for the systems to identify the current emotional state of the user to adapt their dialogue strategies. Nevertheless, this task is challenging because the current emotional states are not always expressed in a natural setting and change dynamically. Recent accumulated evidence has indicated the usefulness of physiological modalities to realize emotion recognition. However, the contribution of the time series physiological signals in human-agent interaction during a dialogue has not been extensively investigated. This paper presents a machine learning model based on physiological signals to estimate a user's sentiment at every exchange during a dialogue. Using a wearable sensing device, the time series physiological data including the electrodermal activity (EDA) and heart rate in addition to acoustic and visual information during a dialogue were collected. The sentiment labels were annotated by the participants themselves and by external human coders for each exchange consisting of a pair of system and participant utterances. The experimental results showed that a multimodal deep neural network (DNN) model combined with the EDA and visual features achieved an accuracy of 63.2%. In general, this task is challenging, as indicated by the accuracy of 63.0% attained by the external coders. The analysis of the sentiment estimation results for each individual indicated that the human coders often wrongly estimated the negative sentiment labels, and in this case, the performance of the DNN model was higher than that of the human coders. These results indicate that physiological signals can help in detecting the implicit aspects of negative sentiments, which are acoustically/visually indistinguishable.

    DOI

  • Assessment of Multidimensional Health Care Parameters Among Adults in Japan for Developing a Virtual Human Generative Model: Protocol for a Cross-sectional Study

    Hibi, M., Katada, S., Kawakami, A., Bito, K., Ohtsuka, M., Sugitani, K., Muli, i, A., Yamanaka, N., Hasumura, T., Ando, Y., Fushimi, T., Fujimatsu, T., Akatsu, T., Kawano, S., Kimura, R., Tsuchiya, S., Yamamoto, Y., Haneoka, M., Kushida, K., Hideshima, T., Shimizu, E., Suzuki, J., Kirino, A., Tsujimura, H., Nakamura, S., Sakamoto, T., Tazoe, Y., Yabuki, M., Nagase, S., Hirano, T., Fukuda, R., Yamashiro, Y., Nagashima, Y., Ojima, N., Sudo, M., Oya, N., Minegishi, Y., Misawa, K., Charoenphakdee, N., Gao, Z., Hayashi, K., Oono, K., Sugawara, Y., Yamaguchi, S., Ono, T., Maruyama, H.

    JMIR Research Protocols   12 ( 1 ) e47024   2023.03  [Refereed]

    DOI

  • Multimodal Analysis for Communication Skill and Self-Efficacy Level Estimation in Job Interview Scenario

    Tomoya Ohba, Candy Olivia Mawalim, Shun Katada, Haruki Kuroki, Shogo Okada

    International Conference on Mobile and Ubiquitous Multimedia (MUM)     110 - 120   2022.11  [Refereed]

     View Summary

    An interview for a job recruiting process requires applicants to demonstrate their communication skills. Interviewees sometimes become nervous about the interview because interviewees themselves do not know their assessed score. This study investigates the relationship between the communication skill (CS) and the self-efficacy level (SE) of interviewees through multimodal modeling. We also clarify the difference between effective features in the prediction of CS and SE labels. For this purpose, we collect a novel multimodal job interview data corpus by using a job interview agent system where users experience the interview using a virtual reality head-mounted display (VR-HMD). The data corpus includes annotations of CS by third-party experts and SE annotations by the interviewees. The data corpus also includes various kinds of multimodal data, including audio, biological (i.e., physiological), gaze, and language data. We present two types of regression models, linear regression and sequential-based regression models, to predict CS, SE, and the gap (GA) between skill and self-efficacy. Finally, we report that the model with acoustic, gaze, and linguistic features has the best regression accuracy in CS prediction (correlation coefficient r = 0.637). Furthermore, the regression model with biological features achieves the best accuracy in SE prediction (r = 0.330).

    DOI

  • Pearson syndrome-like anemia induced by accumulation of mutant mtDNA and anemia with imbalanced white blood cell lineages induced by Drp1 deletion in a murine model.

    Kaori Ishikawa, Yo Honma, Ayami Yoshimi, Shun Katada, Takaya Ishihara, Naotada Ishihara, Kazuto Nakada

    Pharmacological Research   185   106467 - 106467   2022.11  [Refereed]

     View Summary

    Regulation of mitochondrial respiration and morphology is important for maintaining steady-state hematopoiesis, yet few studies have comparatively evaluated the effects of abnormal mitochondrial respiration and dynamics on blood-cell differentiation in isolation or combination. This study sought to explore these effects in mouse models with one or both of the following deficits: a large-scale deletion of mitochondrial DNA (ΔmtDNA), accumulated to varying extents, or knockout of the mitochondrial fission factor Drp1. Each deficit was found to independently provoke anemia but with clearly different manifestations. The former showed signs of aberrant respiration, analogous to Pearson syndrome, while the latter showed signs of abnormal mitochondrial dynamics and was associated with changes in the relative proportions of leukocyte lineages. Combining these deficits acted to amplify abnormal iron metabolism in erythropoiesis, exacerbating anemia in an additive manner. Our results indicate that mitochondrial respiration and dynamics play distinct roles in different sets of processes and cell lineages in hematopoietic differentiation.

    DOI

  • Concomitant use of tea catechins affects absorption and serum triglyceride-lowering effects of monoglucosyl hesperidin.

    Shun Katada, Sachiko Oishi, Kiyotaka Yanagawa, Shunsuke Ishii, Mamoru Oki, Yuji Matsui, Noriko Osaki, Kazuhiko Takano, Masanobu Hibi (Part: Lead author, Corresponding author )

    Food & Function   12 ( 19 ) 9339 - 9346   2021.10  [Refereed]

     View Summary

    The present study investigated whether combined ingestion of green tea catechins (GTC) and monoglucosyl hesperidin (GHES) influences the pharmacokinetic parameters of polyphenols and serum triglycerides (TG). We conducted 2 randomized, controlled trials. Study 1: 8 healthy male subjects participated in a crossover study in which they ingested a test beverage containing GHES (0, 84, 168, or 336 mg GHES) with GTC, or 336 mg GHES without GTC. After ingestion, the pharmacokinetic changes in plasma hesperetin (HEP) and catechins were measured. Study 2: 36 healthy male and female subjects (mean age, 53 ± 2 years; mean BMI, 25.2 ± 0.5 kg m-2) were recruited for a double-blind, placebo-controlled study in which they ingested a test beverage containing 165 mg GHES with 387 mg GTC or a placebo beverage daily for 4 weeks. Fasting serum TG and other lipids and glucose metabolites were analyzed. Study 1 showed that the pharmacokinetics of HEP did not differ significantly between the 336 mg GHES without GTC treatment and the 168 mg GHES with GTC treatment. Study 2 showed that continuous ingestion of 165 mg GHES and 387 mg GTC for 4 weeks significantly decreased fasting serum TG levels compared with baseline values (change in TG, -30 ± 13 mg dl-1, P = 0.040) in the intention-to-treat analysis. In conclusion, our findings suggest that GTC affects the oral bioavailability of GHES, and combined ingestion of low doses of GHES with GTC effectively improves fasting TG levels.

    DOI

  • Effect of tea catechins with caffeine on energy expenditure in middle-aged men and women: a randomized, double-blind, placebo-controlled, crossover trial.

    Shun Katada, Aya Yanagimoto, Yuji Matsui, Masanobu Hibi, Noriko Osaki, Shigeru Kobayashi, Yoshihisa Katsuragi (Part: Lead author, Corresponding author )

    European Journal of Nutrition   59 ( 3 ) 1163 - 1170   2020.04  [Refereed]

     View Summary

    PURPOSE: It has been reported that tea catechins increase energy metabolism, but their effect on resting metabolic rate (RMR) remains under debate. This study aimed to examine the effect of repeated intake of tea catechins on energy metabolism in the resting state in middle-aged men and women. METHODS: A total of 30 middle-aged men and women [13 women; age (mean ± SD) 52 ± 4 years; BMI 21.9 ± 2.2 kg/m2] were recruited. A randomized, double-blind, crossover study was conducted using a tea catechin-enriched beverage (611 mg catechins, 88 mg caffeine) and a placebo beverage (0 mg catechins, 81 mg caffeine) as test beverages. After 2 weeks of continuous test beverage intake, fasting RMR and energy expenditure (EE) after the ingestion of test beverage were measured. Measurements of forehead temperature (proxy for core temperature) and skin temperature were also obtained simultaneously. RESULTS: Among participants who underwent measurements, 26 (10 women; mean age 52 ± 4 years; mean BMI 22.1 ± 2.1 kg/m2) were analyzed. The EE increased significantly after ingestion of the tea catechin beverage compared with the placebo beverage (placebo treatment: 5502 ± 757 kJ/day; catechin treatment: 5598 ± 800 kJ/day; P = 0.041). No between-treatment differences in fasting RMR or the respiratory quotient were detected. In addition, the forehead and skin temperature did not differ significantly between the placebo and catechin treatments. CONCLUSION: This study revealed that continuous intake of tea catechins with caffeine for 2 weeks significantly increased EE after ingestion of the tea catechin but not fasting RMR in middle-aged men and women. CLINICAL TRIAL REGISTRY NUMBER AND WEBSITE: This trial was registered at www.umin.ac.jp/ctr/ as UMIN000025810 and UMIN000025811.

    DOI

  • Effects of Chlorogenic Acid-Enriched and Hydroxyhydroquinone-Reduced Coffee on Postprandial Fat Oxidation and Antioxidative Capacity in Healthy Men: A Randomized, Double-Blind, Placebo-Controlled, Crossover Trial.

    Shun Katada, Takuya Watanabe, Tomohito Mizuno, Shinichi Kobayashi, Masao Takeshita, Noriko Osaki, Shigeru Kobayashi, Yoshihisa Katsuragi (Part: Lead author, Corresponding author )

    Nutrients   10 ( 4 )   2018.04  [Refereed]

     View Summary

    Chlorogenic acids (CGAs) reduce blood pressure and body fat, and enhance fat metabolism. In roasted coffee, CGAs exist together with the oxidant component hydroxyhydroquinone (HHQ). HHQ counteracts the antihypertensive effects of CGA, but its effects on CGA-induced fat oxidation (FOX) are unknown. Here we assessed the effects of CGA-enriched and HHQ-reduced coffee on FOX. Fifteen healthy male volunteers (age: 38 &plusmn; 8 years (mean &plusmn; SD); BMI: 22.4 &plusmn; 1.5 kg/m²) participated in this crossover study. Subjects consumed the test beverage (coffee) containing the same amount of CGA with HHQ (CGA-HHQ(+)) or without HHQ (CGA-HHQ(&minus;)) for four weeks. Postprandial FOX and the ratio of the biological antioxidant potential (BAP) to the derivatives of reactive oxygen metabolites (d-ROMs) as an indicator of oxidative stress were assessed. After the four-week intervention, postprandial FOX and the postprandial BAP/d-ROMs ratio were significantly higher in the CGA-HHQ(&minus;) group compared with the CGA-HHQ(+) group (4 &plusmn; 23 mg/min, group effect: p = 0.040; 0.27 &plusmn; 0.74, group effect: p = 0.007, respectively). In conclusion, reducing the amount of HHQ facilitated the postprandial FOX effects of CGA in coffee. Our findings also suggest that the mechanism underlying the inhibition of FOX by HHQ is related to postprandial oxidative stress.

    DOI

  • Dynamics of mitochondrial DNA nucleoids regulated by mitochondrial fission is essential for maintenance of homogeneously active mitochondria during neonatal heart development.

    Takaya Ishihara, Reiko Ban-Ishihara, Maki Maeda, Yui Matsunaga, Ayaka Ichimura, Sachiko Kyogoku, Hiroki Aoki, Shun Katada, Kazuto Nakada, Masatoshi Nomura, Noboru Mizushima, Katsuyoshi Mihara, Naotada Ishihara

    Molecular and Cellular Biology   35 ( 1 ) 211 - 23   2015.01  [Refereed]

     View Summary

    Mitochondria are dynamic organelles, and their fusion and fission regulate cellular signaling, development, and mitochondrial homeostasis, including mitochondrial DNA (mtDNA) distribution. Cardiac myocytes have a specialized cytoplasmic structure where large mitochondria are aligned into tightly packed myofibril bundles; however, recent studies have revealed that mitochondrial dynamics also plays an important role in the formation and maintenance of cardiomyocytes. Here, we precisely analyzed the role of mitochondrial fission in vivo. The mitochondrial fission GTPase, Drp1, is highly expressed in the developing neonatal heart, and muscle-specific Drp1 knockout (Drp1-KO) mice showed neonatal lethality due to dilated cardiomyopathy. The Drp1 ablation in heart and primary cultured cardiomyocytes resulted in severe mtDNA nucleoid clustering and led to mosaic deficiency of mitochondrial respiration. The functional and structural alteration of mitochondria also led to immature myofibril assembly and defective cardiomyocyte hypertrophy. Thus, the dynamics of mtDNA nucleoids regulated by mitochondrial fission is required for neonatal cardiomyocyte development by promoting homogeneous distribution of active mitochondria throughout the cardiomyocytes.

    DOI

  • Mitochondrial DNA with a large-scale deletion causes two distinct mitochondrial disease phenotypes in mice.

    Shun Katada, Takayuki Mito, Emi Ogasawara, Jun-Ichi Hayashi, Kazuto Nakada (Part: Lead author )

    G3 (Bethesda, Md.)   3 ( 9 ) 1545 - 52   2013.09  [Refereed]

     View Summary

    Studies in patients have suggested that the clinical phenotypes of some mitochondrial diseases might transit from one disease to another (e.g., Pearson syndrome [PS] to Kearns-Sayre syndrome) in single individuals carrying mitochondrial (mt) DNA with a common deletion (ΔmtDNA), but there is no direct experimental evidence for this. To determine whether ΔmtDNA has the pathologic potential to induce multiple mitochondrial disease phenotypes, we used trans-mitochondrial mice with a heteroplasmic state of wild-type mtDNA and ΔmtDNA (mito-miceΔ). Late-stage embryos carrying ≥50% ΔmtDNA showed abnormal hematopoiesis and iron metabolism in livers that were partly similar to PS (PS-like phenotypes), although they did not express sideroblastic anemia that is a typical symptom of PS. More than half of the neonates with PS-like phenotypes died by 1 month after birth, whereas the rest showed a decrease of ΔmtDNA load in the affected tissues, peripheral blood and liver, and they recovered from PS-like phenotypes. The proportion of ΔmtDNA in various tissues of the surviving mito-miceΔ increased with time, and Kearns-Sayre syndrome-like phenotypes were expressed when the proportion of mtDNA in various tissues reached >70-80%. Our model mouse study clearly showed that a single ΔmtDNA was responsible for at least two distinct disease phenotypes at different ages and suggested that the level and dynamics of mtDNA load in affected tissues would be important for the onset and transition of mitochondrial disease phenotypes in mice.

    DOI

  • Mitochondrial DNA mutations in mutator mice confer respiration defects and B-cell lymphoma development.

    Takayuki Mito, Yoshiaki Kikkawa, Akinori Shimizu, Osamu Hashizume, Shun Katada, Hirotake Imanishi, Azusa Ota, Yukina Kato, Kazuto Nakada, Jun-Ichi Hayashi

    PloS One   8 ( 2 ) e55789   2013.02  [Refereed]

     View Summary

    Mitochondrial DNA (mtDNA) mutator mice are proposed to express premature aging phenotypes including kyphosis and hair loss (alopecia) due to their carrying a nuclear-encoded mtDNA polymerase with a defective proofreading function, which causes accelerated accumulation of random mutations in mtDNA, resulting in expression of respiration defects. On the contrary, transmitochondrial mito-miceΔ carrying mtDNA with a large-scale deletion mutation (ΔmtDNA) also express respiration defects, but not express premature aging phenotypes. Here, we resolved this discrepancy by generating mtDNA mutator mice sharing the same C57BL/6J (B6J) nuclear background with that of mito-miceΔ. Expression patterns of premature aging phenotypes are very close, when we compared between homozygous mtDNA mutator mice carrying a B6J nuclear background and selected mito-miceΔ only carrying predominant amounts of ΔmtDNA, in their expression of significant respiration defects, kyphosis, and a short lifespan, but not the alopecia. Therefore, the apparent discrepancy in the presence and absence of premature aging phenotypes in mtDNA mutator mice and mito-miceΔ, respectively, is partly the result of differences in the nuclear background of mtDNA mutator mice and of the broad range of ΔmtDNA proportions of mito-miceΔ used in previous studies. We also provided direct evidence that mtDNA abnormalities in homozygous mtDNA mutator mice are responsible for respiration defects by demonstrating the co-transfer of mtDNA and respiration defects from mtDNA mutator mice into mtDNA-less (ρ(0)) mouse cells. Moreover, heterozygous mtDNA mutator mice had a normal lifespan, but frequently developed B-cell lymphoma, suggesting that the mtDNA abnormalities in heterozygous mutator mice are not sufficient to induce a short lifespan and aging phenotypes, but are able to contribute to the B-cell lymphoma development during their prolonged lifespan.

    DOI

▼display all

Misc

  • Personalized Sentiment Estimation Using Frontal EEG in Human–Agent Interaction

    Shun Katada, Kazunori Komatani

    The 28th SANKEN International Symposium (poster)     2025.01

  • Analysis of Large Language Model-Based Recovery from Dialogue Breakdowns Caused by Speech Recognition Errors

    Shun Katada, Kazunori Komatani

    人工知能学会研究会資料 言語・音声理解と対話処理研究会   102   201 - 206   2024.11

  • Multimodal Human-Agent Dialogue Dataset with Brain Signal

    Shun Katada, Ryu Takeda, Kazunori Komatani

    Spoken Dialogue Systems for Cybernetic Avatars (SDS4CA, Workshop of SIGDIAL, poster)     2024.09

  • Multimodal Spoken Dialogue System with Biosignals

    Shun Katada

    Young Researchers' Roundtable on Spoken Dialogue Systems (YRRSDS, position paper)     30 - 31   2024.09

  • 本人心象と第三者心象の推定におけるマルチモーダル情報と生体信号の役割の分析

    堅田 俊, 岡田 将吾, 駒谷 和範

    電子情報通信学会 ヒューマンコミュニケーション基礎(HCS)研究会 技術研究報告   122 ( 349 ) 86 - 91   2023.01

  • 生体信号時系列と言語系列の注意機構に基づく本人心象推定

    堅田 俊, 岡田 将吾, 駒谷 和範

    電子情報通信学会 ヒューマンコミュニケーショングループ(HCG)シンポジウム     1 - 6   2022.12

  • 個人の主観評価データに基づく対話システムの発話評価手法の検討

    亀山 京右, 堅田 俊, 駒谷 和範

    言語処理若手シンポジウム (YANS)     2024.09

  • 異なる収録環境での対話音声に対する心象推定のためのL1距離に基づく特徴選択

    峯瀬 平, 堅田 俊, 羅 兆傑, 武田 龍, 駒谷 和範

    情報処理学会全国大会     2024.03

  • 新語を含む単語分割のためのストリーム型能動学習における獲得関数の強化学習

    脇 一晟, 堅田 俊, 武田 龍, 駒谷和範

    情報処理学会全国大会     2024.03

  • Drp1機能不全によるミトコンドリア病病態の多様化

    石川 香, 堅田 俊, 本間 耀, 石原 孝也, 石原 直忠, 中田 和人

    日本ミトコンドリア学会年会     2023.03

  • Diversification of Mitochondrial Disease Pathologies through Nuclear-Mitochondrial Crosstalk

    Kaori Ishikawa, Shun Katada, Yo Honma, Yoshimi Ayami, Takaya Ishihara, Naotada Ishihara, Kazuto Nakada

    Annual Meeting of the Molecular Biology Society of Japan     2022

  • ミトコンドリアの分裂を起点としたミトコンドリアの品質管理と病態抑制

    石川 香, 堅田 俊, 石原 孝也, 小笠原 絵美, 川口 敦史, 石原 直忠, 中田 和人

    日本分子生物学会年会     2021

  • Fission-Triggered Mitochondrial Quality Control Is Essential to Suppress Expression of Disease Phenotypes Due to Pathogenic mtDNA Mutation

    Kaori Ishikawa, Shun Katada, Takaya Ishihara, Emi Ogasawara, Naotada Ishihara and Kazuto Nakada

    The Cold Spring Harbor Asia conference on Mitochondria and Metabolism in Health and Disease     2021

  • Release of Multimodal Dialogue Corpus Hazumi and New Data Collection containing Biosensor Signals

    KOMATANI Kazunori, OKADA Shogo, KATADA Shun

    JSAI Technical Report, SIG-SLUD ( The Japanese Society for Artificial Intelligence )    170 - 177   2020.11

    DOI

  • 茶カテキンが中高年男女の基礎代謝と安静時代謝に及ぼす影響

    柳本 彩, 堅田 俊, 松井 祐司, 日比 壮信, 大崎 紀子, 桂木 能久

    日本栄養・食糧学会大会     2018

  • Effects Hydroxyhydroquinone-Reduced Coffee on Postprandial Fat Oxidation and Anti-Oxidative Capacity in Healthy Men: A Randomized, Double-Blind, Placebo- Controlled, Crossover Trial

    Shun Katada, Takuya Watanabe, Tomohito Mizuno, Shinichi Kobayashi, Masao Takeshita, Noriko Osaki and Yoshihisa Katsuragi

    Recent Advances & Controversies in the Measurement of Energy Metabolism (RACMEM)     2017

  • 酸化成分低減コーヒーが健常男性の食後脂質代謝および抗酸化能に及ぼす影響:二重盲検クロスオーバーランダム化プラセボ比較試験

    堅田 俊, 渡辺 卓也, 水野 智仁, 竹下 尚男, 小林 真一, 草浦 達也, 大崎 紀子, 桂木 能久

    日本栄養・食糧学会大会     2017

  • ミトコンドリア呼吸機能及びミトコンドリア分裂が血球系細胞分化に与える影響の解析

    本間 耀, 堅田 俊, 小笠原 絵美, 石原 孝也, 三藤 崇行, 三原 勝芳, 林 純一, 石原 直忠, 中田 和人, 石川 香

    日本分子生物学会年会     2017

  • ミトコンドリア病の多様な病態発症機構の理解に向けたアプローチ~核-ミトコンドリア間クロストーク~

    石川 香, 堅田 俊, 小笠原 絵美, 本間 耀, 石原 孝也, 三藤 崇行, 三原 勝芳, 林 純一, 石原 直忠, 中田 和人

    日本分子生物学会年会     2016

  • The Importance of Mitochondrial Fission in Preventing Disease Phenotypes Induced by a Pathogenic mtDNA Mutation

    Kaori Ishikawa, Shun Katada, Emi Ogasawara, Yo Homma, Takaya Ishihara, Takayuki Mito, Katsuyoshi Mihara, Jun-Ichi Hayashi, Naotada Ishihara, Kazuto Nakada

    Conference of the Asian Society of Mitochondrial Research and Medicine     2016

  • ミトコンドリア遺伝子疾患の病態発症におけるミトコンドリア分裂の役割

    本間 耀, 堅田 俊, 小笠原 絵美, 石原 孝也, 三藤 崇行, 三原 勝芳, 林 純一, 石原 直忠, 中田 和人, 石川 香

    日本分子生物学会年会     2016

  • ミトコンドリア・ダイナミクスの破綻が突然変異型mtDNAの組織内含有率に及ぼす影響

    石川 香, 堅田 俊, 石原 孝也, 櫻澤 遼太, 小笠原 絵美, 林 純一, 三原 勝芳, 石原 直忠, 中田 和人

    日本ミトコンドリア学会年会     2014

  • mtDNA mutator mice におけるB細胞性リンパ腫発症機構の解明

    三藤 崇行, 鈴木 美智子, 清水 章文, 堅田 俊, 中田 和人, 林 純一

    日本分子生物学会年会     2013

  • ミトコンドリア病モデルマウスを用いた病態移行メカニズムの解析

    堅田 俊, 三藤 崇行, 小笠原 絵美, 林 純一, 中田 和人

    日本ミトコンドリア学会年会     2012

  • Transition of Disease Phenotypes in Mice Carrying Mitochondrial DNA with a Deletion

    堅田 俊, 三藤 崇行, 小笠原 絵美, 林 純一, 中田 和人

    日本分子生物学会年会     2012

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Awards & Honors

  • Best Paper Runner Up Award

    Winner: Shun Katada, Kazunori Komatani

    2024.12   ACM Multimedia Asia  

  • 優秀修了者賞

    Winner: 堅田 俊

    2022.12   北陸先端科学技術大学院大学