Details
Original language | English |
---|---|
Pages (from-to) | 47-56 |
Number of pages | 10 |
Journal | Therapeutic Innovation & Regulatory Science |
Volume | 38 |
Issue number | 1 |
Publication status | Published - 20 Dec 2004 |
Abstract
Using three well-designed experimental studies as illustration, we demonstrate that the biostatistical design and analysis of long-term animal studies simulating human osteoporosis should be analogous to the design and analysis of randomized clinical trials. This principal is in accordance with the recommendations from the International Conference on Harmonisation guidelines concerning statistical principles in clinical trials (1). An important element of biostatistical study design is sample size. The three studies that are described herein used an a-priori sample size estimation for the one-way layout that included controls and several treatment and dose groups. In these k-sample designs, with at least one control group, both the multiple comparison procedure and trend tests within procedures for identification of the minimal-effective dose are recommended. Although p-values in pharmacology are quite common, confidence intervals should be used according to their interpretation for both statistical significance and clinical relevance. The use of one-sided confidence intervals for both the difference and the ratio to control for proving either superiority or at least noninferiority is demonstrated by real data examples. Relevant and relatively straightforward software is available for biostatistical analysis and can also be used to aid design. In summary, referring to published, well-designed experimental studies can help to assist with ensuring the quality of future investigations.
Keywords
- comparison, Confidence interval for the ratio, Ibanthonate, Many-to-one, Minimum-effective dose, Osteoporosis, Pharmacological study
ASJC Scopus subject areas
- Pharmacology, Toxicology and Pharmaceutics(all)
- Pharmacology, Toxicology and Pharmaceutics (miscellaneous)
- Medicine(all)
- Public Health, Environmental and Occupational Health
- Medicine(all)
- Pharmacology (medical)
Sustainable Development Goals
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In: Therapeutic Innovation & Regulatory Science, Vol. 38, No. 1, 20.12.2004, p. 47-56.
Research output: Contribution to journal › Article › Research › peer review
}
TY - JOUR
T1 - Biostatistical Design and Analyses of Long-Term Animal Studies Simulating Human Postmenopausal Osteoporosis
AU - Hothorn, Ludwig A.
AU - Bauss, Frieder
PY - 2004/12/20
Y1 - 2004/12/20
N2 - Using three well-designed experimental studies as illustration, we demonstrate that the biostatistical design and analysis of long-term animal studies simulating human osteoporosis should be analogous to the design and analysis of randomized clinical trials. This principal is in accordance with the recommendations from the International Conference on Harmonisation guidelines concerning statistical principles in clinical trials (1). An important element of biostatistical study design is sample size. The three studies that are described herein used an a-priori sample size estimation for the one-way layout that included controls and several treatment and dose groups. In these k-sample designs, with at least one control group, both the multiple comparison procedure and trend tests within procedures for identification of the minimal-effective dose are recommended. Although p-values in pharmacology are quite common, confidence intervals should be used according to their interpretation for both statistical significance and clinical relevance. The use of one-sided confidence intervals for both the difference and the ratio to control for proving either superiority or at least noninferiority is demonstrated by real data examples. Relevant and relatively straightforward software is available for biostatistical analysis and can also be used to aid design. In summary, referring to published, well-designed experimental studies can help to assist with ensuring the quality of future investigations.
AB - Using three well-designed experimental studies as illustration, we demonstrate that the biostatistical design and analysis of long-term animal studies simulating human osteoporosis should be analogous to the design and analysis of randomized clinical trials. This principal is in accordance with the recommendations from the International Conference on Harmonisation guidelines concerning statistical principles in clinical trials (1). An important element of biostatistical study design is sample size. The three studies that are described herein used an a-priori sample size estimation for the one-way layout that included controls and several treatment and dose groups. In these k-sample designs, with at least one control group, both the multiple comparison procedure and trend tests within procedures for identification of the minimal-effective dose are recommended. Although p-values in pharmacology are quite common, confidence intervals should be used according to their interpretation for both statistical significance and clinical relevance. The use of one-sided confidence intervals for both the difference and the ratio to control for proving either superiority or at least noninferiority is demonstrated by real data examples. Relevant and relatively straightforward software is available for biostatistical analysis and can also be used to aid design. In summary, referring to published, well-designed experimental studies can help to assist with ensuring the quality of future investigations.
KW - comparison
KW - Confidence interval for the ratio
KW - Ibanthonate
KW - Many-to-one
KW - Minimum-effective dose
KW - Osteoporosis
KW - Pharmacological study
UR - http://www.scopus.com/inward/record.url?scp=84993730749&partnerID=8YFLogxK
U2 - 10.1177/009286150403800107
DO - 10.1177/009286150403800107
M3 - Article
AN - SCOPUS:84993730749
VL - 38
SP - 47
EP - 56
JO - Therapeutic Innovation & Regulatory Science
JF - Therapeutic Innovation & Regulatory Science
SN - 2168-4790
IS - 1
ER -