Handbook of multiple comparisons:
Written by experts that include originators of some key ideas, chapters in the Handbook of Multiple Testing cover multiple comparison problems big and small, with guidance toward error rate control and insights on how principles developed earlier can be applied to current and emerging problems. Some...
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Weitere Verfasser: | , , , |
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Format: | Buch |
Sprache: | English |
Veröffentlicht: |
Boca Raton ; London ; New York
CRC Press, Taylor & Francis Group
2022
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Ausgabe: | First edition |
Schriftenreihe: | Chapman & Hall/CRC handbooks of modern statistical methods
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Schlagworte: | |
Zusammenfassung: | Written by experts that include originators of some key ideas, chapters in the Handbook of Multiple Testing cover multiple comparison problems big and small, with guidance toward error rate control and insights on how principles developed earlier can be applied to current and emerging problems. Some highlights of the coverages are as follows.Error rate control is useful for controlling the incorrect decision rate. Chapter 1 introduces Tukey's original multiple comparison error rates and point to how they have been applied and adapted to modern multiple comparison problems as discussed in the later chapters. Principles endure. While the closed testing principle is more familiar, Chapter 4 shows the partitioning principle can derive confidence sets for multiple tests, which may become important as the profession goes beyond making decisions based on p-values.Multiple comparisons of treatment efficacy often involve multiple doses and endpoints. Chapter 12 on multiple endpoints explains how different choices of endpoint types lead to different multiplicity adjustment strategies, while Chapter 11 on the MCP-Mod approach is particularly useful for dose-finding. To assess efficacy in clinical trials with multiple doses and multiple endpoints, the reader can see the traditional approach in Chapter 2, the Graphical approach in Chapter 5, and the multivariate approach in Chapter 3. Personalized/precision medicine based on targeted therapies, already a reality, naturally leads to analysis of efficacy in subgroups. Chapter 13 draws attention to subtle logical issues in inferences on subgroups and their mixtures, with a principled solution that resolves these issues. This chapter has implication toward meeting the ICHE9R1 Estimands requirement.Besides the mere multiple testing methodology itself, the handbook also covers related topics like the statistical task of model selection in Chapter 7 or the estimation of the proportion of true null hypotheses (or, in other words, the signal prevalence) in Chapter 8. It also contains decision-theoretic considerations regarding the admissibility of multiple tests in Chapter 6. The issue of selected inference is addressed in Chapter 9.Comparison of responses can involve millions of voxels in medical imaging or SNPs in genome-wide association studies (GWAS). Chapter 14 and Chapter 15 provide state of the art methods for large scale simultaneous inference in these settings |
Beschreibung: | Chapter 1. An Overview of Multiple Comparisons Xinping Cui, Thorsten Dickhaus, Ying Ding, and Jason C. Hsu; Chapter 2. Multiple Test Procedures Based on p-ValuesAjit C. Tamhane and Jiangtao Gou; Chapter 3. Multivariate multiple test proceduresThorsten Dickhaus, Andre Neumann, and Taras Bodnar; Chapter 4. Partitioning for Confidence Sets, Confident Directions, and Decision PathsHelmut Finner, Szu-Yu Tang, Xinping Cui, and Jason C. Hsu; Chapter 5. Graphical approaches for multiple comparison proceduresDong Xi and Frank Bretz; Chapter 6. Decision Theoretic Considerations of Multiple ComparisonsArthur Cohen and Harold Sackrowitz; Chapter 7. Identifying important predictors in large data bases - multiple testing and model selectionMalgorzata Bogdan and Florian Frommlet; Chapter 8. Prevalence EstimationJonathan D. Rosenblatt; Chapter 9. On agnostic post hoc approaches to false positive controlGiles Blanchard, Pierre Neuvial, and Etienne Roquain; Chapter 10. Group sequential and adaptive designsEkkehard Glimm and Lisa V. Hampson; Chapter 11. Multiple testing for dose findingFrank Bretz, Dong Xi, and Björn Bornkamp; Chapter 12. Multiple EndpointsBushi Wang; Chapter 13. Subgroups Analysis for Personalized and Precision Medicine DevelopmentYi Liu, Hong Tian and Jason C. Hsu; Chapter 14. Exploratory inference: localizing relevant effects with confidenceAldo Solari and Jelle J. Goeman; Chapter 15. Testing SNPs in Targeted Drug DevelopmentYing Ding, Yue Wei, Xinjun Wang, and Jason C. Hsu |
Beschreibung: | xiv, 404 Seiten Illustrationen, Diagramme 454 grams |
ISBN: | 9780367140670 9781032111551 |
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500 | |a Chapter 1. An Overview of Multiple Comparisons Xinping Cui, Thorsten Dickhaus, Ying Ding, and Jason C. Hsu; Chapter 2. Multiple Test Procedures Based on p-ValuesAjit C. Tamhane and Jiangtao Gou; Chapter 3. Multivariate multiple test proceduresThorsten Dickhaus, Andre Neumann, and Taras Bodnar; Chapter 4. Partitioning for Confidence Sets, Confident Directions, and Decision PathsHelmut Finner, Szu-Yu Tang, Xinping Cui, and Jason C. Hsu; Chapter 5. Graphical approaches for multiple comparison proceduresDong Xi and Frank Bretz; Chapter 6. Decision Theoretic Considerations of Multiple ComparisonsArthur Cohen and Harold Sackrowitz; Chapter 7. Identifying important predictors in large data bases - multiple testing and model selectionMalgorzata Bogdan and Florian Frommlet; Chapter 8. Prevalence EstimationJonathan D. Rosenblatt; Chapter 9. On agnostic post hoc approaches to false positive controlGiles Blanchard, Pierre Neuvial, and Etienne Roquain; Chapter 10. Group sequential and adaptive designsEkkehard Glimm and Lisa V. Hampson; Chapter 11. Multiple testing for dose findingFrank Bretz, Dong Xi, and Björn Bornkamp; Chapter 12. Multiple EndpointsBushi Wang; Chapter 13. Subgroups Analysis for Personalized and Precision Medicine DevelopmentYi Liu, Hong Tian and Jason C. Hsu; Chapter 14. Exploratory inference: localizing relevant effects with confidenceAldo Solari and Jelle J. Goeman; Chapter 15. Testing SNPs in Targeted Drug DevelopmentYing Ding, Yue Wei, Xinjun Wang, and Jason C. Hsu | ||
520 | |a Written by experts that include originators of some key ideas, chapters in the Handbook of Multiple Testing cover multiple comparison problems big and small, with guidance toward error rate control and insights on how principles developed earlier can be applied to current and emerging problems. Some highlights of the coverages are as follows.Error rate control is useful for controlling the incorrect decision rate. Chapter 1 introduces Tukey's original multiple comparison error rates and point to how they have been applied and adapted to modern multiple comparison problems as discussed in the later chapters. Principles endure. While the closed testing principle is more familiar, Chapter 4 shows the partitioning principle can derive confidence sets for multiple tests, which may become important as the profession goes beyond making decisions based on p-values.Multiple comparisons of treatment efficacy often involve multiple doses and endpoints. | ||
520 | |a Chapter 12 on multiple endpoints explains how different choices of endpoint types lead to different multiplicity adjustment strategies, while Chapter 11 on the MCP-Mod approach is particularly useful for dose-finding. To assess efficacy in clinical trials with multiple doses and multiple endpoints, the reader can see the traditional approach in Chapter 2, the Graphical approach in Chapter 5, and the multivariate approach in Chapter 3. Personalized/precision medicine based on targeted therapies, already a reality, naturally leads to analysis of efficacy in subgroups. Chapter 13 draws attention to subtle logical issues in inferences on subgroups and their mixtures, with a principled solution that resolves these issues. | ||
520 | |a This chapter has implication toward meeting the ICHE9R1 Estimands requirement.Besides the mere multiple testing methodology itself, the handbook also covers related topics like the statistical task of model selection in Chapter 7 or the estimation of the proportion of true null hypotheses (or, in other words, the signal prevalence) in Chapter 8. It also contains decision-theoretic considerations regarding the admissibility of multiple tests in Chapter 6. The issue of selected inference is addressed in Chapter 9.Comparison of responses can involve millions of voxels in medical imaging or SNPs in genome-wide association studies (GWAS). Chapter 14 and Chapter 15 provide state of the art methods for large scale simultaneous inference in these settings | ||
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700 | 1 | |a Ding, Ying |4 edt | |
700 | 1 | |a Hsu, Jason C. |0 (DE-588)128996161 |4 edt | |
776 | 0 | 8 | |i Erscheint auch als |n Online-Ausgabe |z 9780429030888 |
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Datensatz im Suchindex
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any_adam_object | |
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author2 | Cui, Xinping Dickhaus, Thorsten-Ingo Ding, Ying Hsu, Jason C. |
author2_role | edt edt edt edt |
author2_variant | x c xc t i d tid y d yd j c h jc jch |
author_GND | (DE-588)133890201 (DE-588)128996161 |
author_facet | Cui, Xinping Dickhaus, Thorsten-Ingo Ding, Ying Hsu, Jason C. |
building | Verbundindex |
bvnumber | BV047590704 |
ctrlnum | (OCoLC)1289761544 (DE-599)BVBBV047590704 |
edition | First edition |
format | Book |
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id | DE-604.BV047590704 |
illustrated | Illustrated |
index_date | 2024-07-03T18:36:05Z |
indexdate | 2024-07-10T09:15:42Z |
institution | BVB |
isbn | 9780367140670 9781032111551 |
language | English |
oai_aleph_id | oai:aleph.bib-bvb.de:BVB01-032975877 |
oclc_num | 1289761544 |
open_access_boolean | |
owner | DE-29T |
owner_facet | DE-29T |
physical | xiv, 404 Seiten Illustrationen, Diagramme 454 grams |
publishDate | 2022 |
publishDateSearch | 2022 |
publishDateSort | 2022 |
publisher | CRC Press, Taylor & Francis Group |
record_format | marc |
series2 | Chapman & Hall/CRC handbooks of modern statistical methods |
spelling | Handbook of multiple comparisons Xinping Cui, Thorsten Dickhaus, Ying Ding, Jason C. Hsu (eds.) First edition Boca Raton ; London ; New York CRC Press, Taylor & Francis Group 2022 xiv, 404 Seiten Illustrationen, Diagramme 454 grams txt rdacontent n rdamedia nc rdacarrier Chapman & Hall/CRC handbooks of modern statistical methods Chapter 1. An Overview of Multiple Comparisons Xinping Cui, Thorsten Dickhaus, Ying Ding, and Jason C. Hsu; Chapter 2. Multiple Test Procedures Based on p-ValuesAjit C. Tamhane and Jiangtao Gou; Chapter 3. Multivariate multiple test proceduresThorsten Dickhaus, Andre Neumann, and Taras Bodnar; Chapter 4. Partitioning for Confidence Sets, Confident Directions, and Decision PathsHelmut Finner, Szu-Yu Tang, Xinping Cui, and Jason C. Hsu; Chapter 5. Graphical approaches for multiple comparison proceduresDong Xi and Frank Bretz; Chapter 6. Decision Theoretic Considerations of Multiple ComparisonsArthur Cohen and Harold Sackrowitz; Chapter 7. Identifying important predictors in large data bases - multiple testing and model selectionMalgorzata Bogdan and Florian Frommlet; Chapter 8. Prevalence EstimationJonathan D. Rosenblatt; Chapter 9. On agnostic post hoc approaches to false positive controlGiles Blanchard, Pierre Neuvial, and Etienne Roquain; Chapter 10. Group sequential and adaptive designsEkkehard Glimm and Lisa V. Hampson; Chapter 11. Multiple testing for dose findingFrank Bretz, Dong Xi, and Björn Bornkamp; Chapter 12. Multiple EndpointsBushi Wang; Chapter 13. Subgroups Analysis for Personalized and Precision Medicine DevelopmentYi Liu, Hong Tian and Jason C. Hsu; Chapter 14. Exploratory inference: localizing relevant effects with confidenceAldo Solari and Jelle J. Goeman; Chapter 15. Testing SNPs in Targeted Drug DevelopmentYing Ding, Yue Wei, Xinjun Wang, and Jason C. Hsu Written by experts that include originators of some key ideas, chapters in the Handbook of Multiple Testing cover multiple comparison problems big and small, with guidance toward error rate control and insights on how principles developed earlier can be applied to current and emerging problems. Some highlights of the coverages are as follows.Error rate control is useful for controlling the incorrect decision rate. Chapter 1 introduces Tukey's original multiple comparison error rates and point to how they have been applied and adapted to modern multiple comparison problems as discussed in the later chapters. Principles endure. While the closed testing principle is more familiar, Chapter 4 shows the partitioning principle can derive confidence sets for multiple tests, which may become important as the profession goes beyond making decisions based on p-values.Multiple comparisons of treatment efficacy often involve multiple doses and endpoints. Chapter 12 on multiple endpoints explains how different choices of endpoint types lead to different multiplicity adjustment strategies, while Chapter 11 on the MCP-Mod approach is particularly useful for dose-finding. To assess efficacy in clinical trials with multiple doses and multiple endpoints, the reader can see the traditional approach in Chapter 2, the Graphical approach in Chapter 5, and the multivariate approach in Chapter 3. Personalized/precision medicine based on targeted therapies, already a reality, naturally leads to analysis of efficacy in subgroups. Chapter 13 draws attention to subtle logical issues in inferences on subgroups and their mixtures, with a principled solution that resolves these issues. This chapter has implication toward meeting the ICHE9R1 Estimands requirement.Besides the mere multiple testing methodology itself, the handbook also covers related topics like the statistical task of model selection in Chapter 7 or the estimation of the proportion of true null hypotheses (or, in other words, the signal prevalence) in Chapter 8. It also contains decision-theoretic considerations regarding the admissibility of multiple tests in Chapter 6. The issue of selected inference is addressed in Chapter 9.Comparison of responses can involve millions of voxels in medical imaging or SNPs in genome-wide association studies (GWAS). Chapter 14 and Chapter 15 provide state of the art methods for large scale simultaneous inference in these settings bisacsh / MEDICAL / Biostatistics Cui, Xinping edt Dickhaus, Thorsten-Ingo (DE-588)133890201 edt Ding, Ying edt Hsu, Jason C. (DE-588)128996161 edt Erscheint auch als Online-Ausgabe 9780429030888 |
spellingShingle | Handbook of multiple comparisons bisacsh / MEDICAL / Biostatistics |
title | Handbook of multiple comparisons |
title_auth | Handbook of multiple comparisons |
title_exact_search | Handbook of multiple comparisons |
title_exact_search_txtP | Handbook of multiple comparisons |
title_full | Handbook of multiple comparisons Xinping Cui, Thorsten Dickhaus, Ying Ding, Jason C. Hsu (eds.) |
title_fullStr | Handbook of multiple comparisons Xinping Cui, Thorsten Dickhaus, Ying Ding, Jason C. Hsu (eds.) |
title_full_unstemmed | Handbook of multiple comparisons Xinping Cui, Thorsten Dickhaus, Ying Ding, Jason C. Hsu (eds.) |
title_short | Handbook of multiple comparisons |
title_sort | handbook of multiple comparisons |
topic | bisacsh / MEDICAL / Biostatistics |
topic_facet | bisacsh / MEDICAL / Biostatistics |
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