語系/ Language: 繁體中文

The Development and Application of M...
University of Minnesota.

 

  • The Development and Application of Machine Learning for Drug Discovery and Drug Response Prediction for Personalized Cancer Treatment /
  • 紀錄類型: 書目-語言資料,印刷品 : Monograph/item
    正題名/作者: The Development and Application of Machine Learning for Drug Discovery and Drug Response Prediction for Personalized Cancer Treatment // Danielle Michelle-Maeser Stover.
    作者: Stover, Danielle Michelle-Maeser,
    面頁冊數: 1 electronic resource (158 pages)
    附註: Source: Dissertations Abstracts International, Volume: 85-09, Section: B.
    提要註: In the field of pharmacogenomics and precision medicine, gene expression analysis has become a crucial tool in predicting patient drug response. My contributions to this field come primarily in the development and application of two bioinformatic packages: oncoPredict and scIDUC. oncoPredict is a tool based in the R programming language, primarily used to predict the response of various cancer samples (cell line, patient, etc.) to different drugs. This is made possible by incorporating machine learning to analyze the complex relationships between genomic features and drug response from pan-cancer cell lines. These relationships are learned from microarray or bulk RNA sequencing (RNA-seq) data and high-throughput drug screens, then applied to patient data to generate novel drug discovery hypotheses. In turn, oncoPredict aids in identifying potential drug candidates, understanding mechanisms of drug resistance, and predicting the effectiveness of drugs on specific cancer types. scIDUC (single-cell Integration and Drug Utility Computation) is a computational framework based in python that quickly and accurately generates predictions of drug response for cells derived from single-cell RNA sequencing (scRNA-seq) data. It is a transfer learning-based approach that learns relationships between drug sensitivities and relevant gene expression patterns based on cell line bulk RNA-seq data and high-throughput drug screens, similar to oncoPredict. The key difference, however, is that prior to training drug response models, scIDUC integrates bulk RNA-seq and target scRNA-seq data to denoise and extract shared gene expression patterns between bulk and single-cell data sources. The resulting bulk data is then used to train drug response models, whose coefficients are further applied to post-integration single-cell data to infer cellular drug sensitivity scores. 
    Contained By: Dissertations Abstracts International85-09B.
    標題: Pharmaceutical sciences. -
    電子資源: http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=30991067
    ISBN: 9798381952537
多媒體
評論
  • 新增評論 分享你的心得,請勿在此評論區張貼涉及人身攻擊、情緒謾罵、或內容涉及非法的不當言論,館方有權利刪除任何違反評論規則之發言,情節嚴重者一律停權,以維護所有讀者的自由言論空間。
Export
取書館別
 
 
變更密碼
登入

請輸入帳號密碼

          (請輸入學號/職號).

      (請輸入學校電子郵件密碼)
.
    本校和附屬機構教職員工生,可透過校務資訊系統【快速登入區】進行登入,不用再認證。

    校內教職員工及學生

    帳號:學號/職號;密碼:本校電子信箱密碼

    附屬機構醫事人員、其他非編制內教職員工

    帳號:職號;密碼:身份證號共10碼,英文字母大寫

    校友及外校實習生

    帳號:借書證上之條碼號;密碼:請點選忘記密碼重新設定

    如有任何問題歡迎洽詢圖書館流通櫃台(分機2133*83;read@kmu.edu.tw),謝謝。

        ~請尊重智慧財產權,勿非法影印~

     Login information for International Students: *Username: Student ID Password: KMU Email Password

     If you have any question, please contact us. (Tel : 07-3121101#2133#83; Email: read@kmu.edu.tw)

     ~Please respect the Intellectual Property Rights, do not use illegal copies of textbooks ~