logo
logo
x
바코드검색
BOOKPRICE.co.kr
책, 도서 가격비교 사이트
바코드검색

인기 검색어

실시간 검색어

검색가능 서점

도서목록 제공

[eBook Code] Spatial and Syndromic Surveillance for Public Health

[eBook Code] Spatial and Syndromic Surveillance for Public Health (eBook Code, 1st)

Andrew B. Lawson, Ken Kleinman (엮은이)
Wiley
226,500원

일반도서

검색중
서점 할인가 할인률 배송비 혜택/추가 실질최저가 구매하기
181,200원 -20% 0원
0원
181,200원 >
yes24 로딩중
교보문고 로딩중
notice_icon 검색 결과 내에 다른 책이 포함되어 있을 수 있습니다.

중고도서

검색중
서점 유형 등록개수 최저가 구매하기
로딩중

eBook

검색중
서점 정가 할인가 마일리지 실질최저가 구매하기
로딩중

책 이미지

[eBook Code] Spatial and Syndromic Surveillance for Public Health
eBook 미리보기

책 정보

· 제목 : [eBook Code] Spatial and Syndromic Surveillance for Public Health (eBook Code, 1st) 
· 분류 : 외국도서 > 의학 > 생물통계학
· ISBN : 9780470341506
· 쪽수 : 272쪽
· 출판일 : 2007-12-10

목차

Preface.

List of Contributors.

1 Introduction: Spatial and syndromic surveillance for public health (Andrew B. Lawson and Ken Kleinman).

1.1 What is public health surveillance?

1.2 The increased importance of public health surveillance.

1.3 Geographic information, cluster detection and spatial surveillance.

1.4 Surveillance and screening.

1.5 Overview of process control and mapping.

1.6 The purpose of this book.

1.7 The contents of this book.

Part I: Introduction to Temporal Surveillance.

2 Overview of temporal surveillance (Yann Le Strat).

2.1 Introduction.

2.2 Statistical methods.

2.3 Conclusion.

3 Optimal surveillance (Marianne Frisén and Christian Sonesson).

3.1 Introduction.

3.2 Optimality for a fixed sample and for on-line surveillance.

3.3 Specification of the statistical surveillance problem.

3.4 Evaluations of systems for surveillance.

3.5 Optimality criteria.

3.6.1 The likelihood ratio method.

3.7 Special aspects of optimality for surveillance of public health.

3.8 Concluding remarks.

Acknowledgment.

Part II: Basic Methods for Spatial and Syndromic Surveillance.

4 Spatial and spatio-temporal disease analysis (Andrew B. Lawson).

4.1 Introduction.

4.2 Disease mapping and map reconstruction.

4.3 Disease map restoration.

4.4 Residuals and goodness of fit.

4.5 Spatio-temporal analysis.

4.6 Surveillance issues.

5 Generalized linear models and generalized linear mixed models for small-area surveillance (Ken Kleinman).

5.1 Introduction.

5.2 Surveillance using small-area modeling.

5.3 Alternate model formulations.

5.4 Practical variations.

5.5 Data.

5.6 Evaluation.

5.7 Conclusion.

6 Spatial surveillance and cumulative sum methods (Peter A. Rogerson).

6.1 Introduction.

6.2 Statistical process control.

6.3 Cumulative sum methods for spatial surveillance.

6.4 Summary and discussion.

Acknowledgments.

Appendix.

7 Scan statistics for geographical disease surveillance: an overview (Martin Kulldorff).

7.1 Introduction.

7.2 Scan statistics for geographical disease surveillance.

7.3 Secondary clusters.

7.4 Null and alternative hypotheses.

7.5 Power.

7.6 Visualizing the detected clusters.

7.7 A Sample of applications.

7.8 Software.

Acknowledgment.

8 Distance-based methods for spatial and spatio-temporal surveillance (Laura Forsberg, Marco Bonetti, Caroline Jeffery, Al Ozonoff and Marcello Pagano).

8.1 Introduction.

8.2 Motivation.

8.3 Distance-based statistics for surveillance.

8.4 Spatio-temporal surveillance: an example.

8.5 Locating clusters.

8.6 Conclusion.

Acknowledgments.

9 Multivariate surveillance (Christian Sonesson and Marianne Frisén).

9.1 Introduction.

9.2 Specifications.

9.3 Approaches to multivariate surveillance.

9.4 Evaluation of the properties of multivariate surveillance methods.

9.5 Concluding discussion.

Part III: Database Mining and Bayesian Methods.

10 Bayesian network approaches to detection (Weng-Keen Wong and Andrew W. Moore).

10.1 Introduction.

10.2 Association rules.

10.3 WSARE.

10.4 Evaluation.

10.5 Results.

10.6 Conclusion.

11 Efficient scan statistic computations (Daniel B. Neill and Andrew W. Moore)

11.1 Introduction.

11.2 Overlap-multiresolution partitioning.

11.3 Results.

11.4 Conclusions and future work.

12 Bayesian data mining for health surveillance (David Madigan).

12.1 Introduction.

12.2 Probabilistic graphical models.

12.3 Hidden Markov models for surveillance: illustrative examples.

12.4 Hidden Markov models for surveillance: further exploration.

12.5 Random observation time hidden Markov models.

12.6 Interpretation of hidden Markov models for surveillance.

12.7 Discussion.

Acknowledgments.

13 Advanced modeling for surveillance: clustering of relative risk changes (Andrew B. Lawson).

13.1 Introduction.

13.2 Cluster concepts.

13.3 Cluster modeling.

13.4 Syndromic cluster assessment.

13.5 Bayesian version of the optimal surveillance alarm function.

13.6 Computational issues.

13.7 Conclusions and future directions.

References.

Index.

이 포스팅은 쿠팡 파트너스 활동의 일환으로,
이에 따른 일정액의 수수료를 제공받습니다.
이 포스팅은 제휴마케팅이 포함된 광고로 커미션을 지급 받습니다.
도서 DB 제공 : 알라딘 서점(www.aladin.co.kr)
최근 본 책