본문

서브메뉴

상세정보

Computational Statistics for Medical Diagnostics: From RT-qPCR to Pathological Imaging.
Computational Statistics for Medical Diagnostics: From RT-qPCR to Pathological Imaging.
Computational Statistics for Medical Diagnostics: From RT-qPCR to Pathological Imaging.

상세정보

자료유형  
 학위논문(국외)
기본표목-개인명  
표제와 책임표시사항  
Computational Statistics for Medical Diagnostics: From RT-qPCR to Pathological Imaging.
발행, 배포, 간사 사항  
발행, 배포, 간사 사항  
Ann Arbor : ProQuest Dissertations & Theses , 2025
    형태사항  
    116 p.
    일반주기  
    Source: Dissertations Abstracts International, Volume: 87-04, Section: B.
    일반주기  
    Advisor: Huang, Haiyan;Obermeyer, Ziad.
    학위논문주기  
    Thesis (Ph.D.)--University of California, Berkeley, 2025.
    요약 등 주기  
    요약Public health challenges require sophisticated analytical approaches to handle massive, heterogeneous datasets spanning genetic, behavioral, social, and clinical domains across diverse populations and geographic regions. While classical statistical methods struggle with such complex data structures, deep learning models demonstrate significant potential in delivering more accurate predictive solutions with big data. This study addresses key concepts in computational statistics including prediction performance improvements, ground truth quality, big data approaches, and model interpretability through two distinct applications in public health diagnostics. We present SPARK, a deep learning model for RT-qPCR curve analysis that significantly outperforms current practice in SARS-CoV-2 testing. SPARK achieves a false negative rate of 1% with only 4.38% false positives, compared to over 60% false positives with conventional thresholding methods. Critically, we train SPARK using true ground truth labels from RT-qPCR quality control curves rather than human-generated labels, enabling the model to learn beyond current thresholding practice and differentiate itself from other deep learning approaches trained on human labels. In pathological image analysis, we demonstrate deep learning applications in two clinical contexts: predicting breast cancer development from benign breast disease whole slide images and detecting pancreatic malignancy from fine-needle aspiration cytology images. One of our models significantly outperforms estimated clinician prediction for breast cancer risk (AUROC: 0.577 vs. 0.472, p ≤ 0.05) and the other model achieves high accuracy in pancreatic malignancy detection with an average precision of 0.98. Our methods enable accurate diagnostic guidance through attention-based interpretability methods that highlight relevant image regions for clinical decision-making. These applications demonstrate how computational methods can transform public health practice by leveraging high-quality ground truth data and deep learning architectures to improve diagnostic accuracy and enhance clinical decision support.
    주제명부출표목-일반주제명  
    주제명부출표목-일반주제명  
    주제명부출표목-일반주제명  
    비통제 색인어  
    비통제 색인어  
    비통제 색인어  
    비통제 색인어  
    비통제 색인어  
    부출표목-단체명  
    기본자료저록  
    Dissertations Abstracts International. 87-04B.
    전자적 위치 및 접속  
     원문정보보기

    MARC

     008260219s2025        us  ||||||||||||||c||eng  d
    ■001000017359371
    ■00520260202105109
    ■006m          o    d                
    ■007cr#unu||||||||
    ■020    ▼a9798293893485
    ■035    ▼a(MiAaPQ)AAI32236913
    ■040    ▼aMiAaPQ▼cMiAaPQ
    ■0820  ▼a310
    ■1001  ▼aVu,  Huong  Bui  Thien.
    ■24510▼aComputational  Statistics  for  Medical  Diagnostics:  From  RT-qPCR  to  Pathological  Imaging.
    ■260    ▼a[S.l.]▼bUniversity  of  California,  Berkeley.  ▼c2025
    ■260  1▼aAnn  Arbor▼bProQuest  Dissertations  &  Theses▼c2025
    ■300    ▼a116  p.
    ■500    ▼aSource:  Dissertations  Abstracts  International,  Volume:  87-04,  Section:  B.
    ■500    ▼aAdvisor:  Huang,  Haiyan;Obermeyer,  Ziad.
    ■5021  ▼aThesis  (Ph.D.)--University  of  California,  Berkeley,  2025.
    ■520    ▼aPublic  health  challenges  require  sophisticated  analytical  approaches  to  handle  massive,  heterogeneous  datasets  spanning  genetic,  behavioral,  social,  and  clinical  domains  across  diverse  populations  and  geographic  regions.  While  classical  statistical  methods  struggle  with  such  complex  data  structures,  deep  learning  models  demonstrate  significant  potential  in  delivering  more  accurate  predictive  solutions  with  big  data.  This  study  addresses  key  concepts  in  computational  statistics  including  prediction  performance  improvements,  ground  truth  quality,  big  data  approaches,  and  model  interpretability  through  two  distinct  applications  in  public  health  diagnostics.  We  present  SPARK,  a  deep  learning  model  for  RT-qPCR  curve  analysis  that  significantly  outperforms  current  practice  in  SARS-CoV-2  testing.  SPARK  achieves  a  false  negative  rate  of  1%  with  only  4.38%  false  positives,  compared  to  over  60%  false  positives  with  conventional  thresholding  methods.  Critically,  we  train  SPARK  using  true  ground  truth  labels  from  RT-qPCR  quality  control  curves  rather  than  human-generated  labels,  enabling  the  model  to  learn  beyond  current  thresholding  practice  and  differentiate  itself  from  other  deep  learning  approaches  trained  on  human  labels.  In  pathological  image  analysis,  we  demonstrate  deep  learning  applications  in  two  clinical  contexts:  predicting  breast  cancer  development  from  benign  breast  disease  whole  slide  images  and  detecting  pancreatic  malignancy  from  fine-needle  aspiration  cytology  images.  One  of  our  models  significantly  outperforms  estimated  clinician  prediction  for  breast  cancer  risk  (AUROC:  0.577  vs.  0.472,  p  ≤  0.05)  and  the  other  model  achieves  high  accuracy  in  pancreatic  malignancy  detection  with  an  average  precision  of  0.98.  Our  methods  enable  accurate  diagnostic  guidance  through  attention-based  interpretability  methods  that  highlight  relevant  image  regions  for  clinical  decision-making.  These  applications  demonstrate  how  computational  methods  can  transform  public  health  practice  by  leveraging  high-quality  ground  truth  data  and  deep  learning  architectures  to  improve  diagnostic  accuracy  and  enhance  clinical  decision  support.
    ■590    ▼aSchool  code:  0028.
    ■650  4▼aStatistics.
    ■650  4▼aComputer  science.
    ■650  4▼aPublic  health.
    ■653    ▼aComputational  pathology
    ■653    ▼aComputational  statistics
    ■653    ▼aComputer  vision
    ■653    ▼aDeep  learning
    ■653    ▼aDiagnostics
    ■690    ▼a0463
    ■690    ▼a0984
    ■690    ▼a0573
    ■71020▼aUniversity  of  California,  Berkeley▼bStatistics.
    ■7730  ▼tDissertations  Abstracts  International▼g87-04B.
    ■790    ▼a0028
    ■791    ▼aPh.D.
    ■792    ▼a2025
    ■793    ▼aEnglish
    ■85640▼uhttp://www.riss.kr/pdu/ddodLink.do?id=T17359371▼nKERIS▼z이  자료의  원문은  한국교육학술정보원에서  제공합니다.

    미리보기

    내보내기

    chatGPT토론

    Ai 추천 관련 도서


      신착도서 더보기
      관련도서 더보기
      최근 3년간 통계입니다.
      SMS 발송 간략정보 이동 상세정보출력

      소장정보

      • 예약
      • 서가에 없는 책 신고
      • 자료배달서비스
      • 나의폴더
      • 우선정리요청
      소장자료
      등록번호 청구기호 소장처 대출가능여부 대출정보
      EM179488 TD   자료대출실(3층) 정리중  정리중 
      마이폴더

      * 대출중인 자료에 한하여 예약이 가능합니다. 예약을 원하시면 예약버튼을 클릭하십시오.

      해당 도서를 다른 이용자가 함께 대출한 도서

      관련도서

      관련 인기도서

      서평쓰기