IPSJ Transactions on Bioinformatics
Online ISSN : 1882-6679
ISSN-L : 1882-6679
10 巻
選択された号の論文の4件中1~4を表示しています
  • Yoichi Takenaka
    原稿種別: Editorial
    専門分野: Editorial Board
    2017 年 10 巻 p. 1
    発行日: 2017年
    公開日: 2017/01/20
    ジャーナル フリー
  • Masashi Tsubaki, Masashi Shimbo, Yuji Matsumoto
    原稿種別: Original Papers
    専門分野: Original Paper
    2017 年 10 巻 p. 2-8
    発行日: 2017年
    公開日: 2017/01/20
    ジャーナル フリー

    Predicting the 3D structure of a protein from its amino acid sequence is an important challenge in bioinformatics. Since directly predicting the 3D structure is hard to achieve, classifying a protein into one of the “folds”, which are pre-defined structural labels in protein databases such as SCOP and CATH, is generally used as an intermediate step to determine the 3D structure. This classification task is called protein fold recognition (PFR), and much research has addressed the problem of either (i) feature extractions from amino acid sequences or (ii) classification methods of the protein folds. In this paper, we propose a new approach for PFR with (i) learning feature representations with unsupervised methods from a large protein database instead of manual feature selection and using external tools. (ii) learning deep neural architectures, recurrent neural networks (RNNs) with long short-term memory (LSTM) units, and re-training the representations instead of fixing the extracted features. On a benchmark dataset, our approach outperforms existing methods that use various physicochemical features.

  • Ayako Ohshiro, Hitoshi Afuso, Takeo Okazaki, Morikazu Nakamura
    原稿種別: Original Papers
    専門分野: Original Paper
    2017 年 10 巻 p. 9-15
    発行日: 2017年
    公開日: 2017/03/29
    ジャーナル フリー

    Various de novo assembly methods based on the concept of k-mer have been proposed. Despite the success of these methods, an alternative approach, referred to as the hybrid approach, has recently been proposed that combines different traditional methods to effectively exploit each of their properties in an integrated manner. However, the results obtained from the traditional methods used in the hybrid approach depend not only on the specific algorithm or heuristics but also on the selection of a user-specific k-mer size. Consequently, the results obtained with the hybrid approach also depend on these factors. Here, we designed a new assembly approach, referred to as the rule-based assembly. This approach follows a similar strategy to the hybrid approach, but employs specific rules learned from certain characteristics of draft contigs to remove any erroneous contigs and then merges them. To construct the most effective rules for this purpose, a learning method based on decision trees, i.e., a complex decision tree, is proposed. Comparative experiments were also conducted to validate the method. The results showed that proposed method could outperformed traditional methods in certain cases.

  • Lidong Wang, Keyong Hu, Xiaodong Xu
    原稿種別: Original Paper
    専門分野: Original Paper
    2017 年 10 巻 p. 16-21
    発行日: 2017年
    公開日: 2017/11/16
    ジャーナル フリー

    TCM has been widely researched through various methods in computer science in past decades, but none digs into huge amount of clinical cases to discover the meaningful treatment patterns between symptoms and herbs. To meet the challenge, we explore the unstructured and intricate experiential data in clinical case, and propose a method to discover the treatment patterns by introducing a novel topic model named SHT (Symptom-Herb Topic model). Combinational rules are incorporated into the learning process. We evaluate our method on 3,765 TCM clinical cases. The experiment validates the effectiveness of our method compared with LDA model and LinkLDA model.

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