CHAPTER 2: Present Study. Design, Material and Statistical Methods

1962 ◽  
Vol 37 (S163) ◽  
pp. 15-22
Author(s):  
Mats Gruvstad ◽  
Lars Kebbon
2019 ◽  
Author(s):  
Dorothy Vera Margaret Bishop

Experimental psychology is affected by a "replication crisis" that is causing concern in many areas of science. Approaches to tackling this crisis include better training in statistical methods, greater transparency and openness, and changes to the incentives created by funding agencies, journals and institutions. Here I argue that if proposed solutions are to be effective, we need also to take into account people's cognitive constraints that can distort all stages of the research process: designing and executing experiments, analysing data, and writing up findings for publication. I focus specifically on cognitive schemata in perception and memory, confirmation bias, systematic misunderstanding of statistics, and asymmetry in moral judgements of errors of commission and omission. Finally, I consider methods that may help mitigate the effects of cognitive constraints: better training, including use of simulations to overcome statistical misunderstanding, specific programs directed at inoculating against cognitive biases, adoption of Registered Reports to encourage more critical reflection in planning studies, and using methods such as triangulation and "pre mortem" evaluation of study design to make a culture of criticism more acceptable.


2021 ◽  
Author(s):  
Liliya Baranova

A conclusive fish tumour prevalence assessment has never been conducted in the lower part of the St. Clair River Area of Concern, despite possible re-contamination of the river and anecdotal evidence of fish abnormalities. This paper provides a study design for a comprehensive fish tumour prevalence assessment of the Lower St. Clair River with special focus on Walpole Island First Nation and surrounding waters. Study details such as area of focus, sentinel species, suggested sampling locations, sample size, field protocols and statistical methods are identified. A brief guide for histopathological examination and interpretation is provided. An alternate method of sampling location siting is suggested. This study design is intended to provide a guide and background reference for the implementation of a future full scale fish tumour assessment in the Lower St. Clair River.


1998 ◽  
Vol 19 (3) ◽  
pp. 268-282 ◽  
Author(s):  
Rainer Gross ◽  
Darwin Karyadi ◽  
Soemilah Sastroamidjojo ◽  
Werner Schultink

SHARP (a Structured, Holistic Approach for a Research Proposal) is a structured method for developing a research proposal that can be used either by individuals or by teams of researchers. The eight steps in SHARP are (1) setting up a causal model, (2) establishing a fact–hypothesis matrix (FaHM), (3) developing a variable–indicator–method matrix (VIM), (4) selecting the study design, (5) defining the sampling procedure and calculating the sample size, (6) selecting the statistical methods, (7) considering the ethical aspects, and (8) setting up an operational plan. The objectives of the research proposal are to help the researcher to define the contents and to plan and execute a research project, and to inform potential collaborators and supporters about the topic. The proposal that is produced during the process can be submitted to agencies for possible funding.


Author(s):  
Janet Peacock ◽  
Philip Peacock

Written in an easily accessible style, the Oxford Handbook of Medical Statistics provides doctors and medical students with a concise and thorough account of this often difficult subject. It promotes understanding and interpretation of statistical methods across a wide range of topics, from study design and sample size considerations, through t- and chi-squared tests, to complex multifactorial analyses, using examples from published research.


2017 ◽  
Vol 1 (S1) ◽  
pp. 18-19
Author(s):  
Ram Gouripeddi ◽  
Mollie Cummins ◽  
Randy Madsen ◽  
Bernie LaSalle ◽  
Andrew Middleton Redd ◽  
...  

OBJECTIVES/SPECIFIC AIMS: Key factors causing irreproducibility of research include those related to inappropriate study design methodologies and statistical analysis. In modern statistical practice irreproducibility could arise due to statistical (false discoveries, p-hacking, overuse/misuse of p-values, low power, poor experimental design) and computational (data, code and software management) issues. These require understanding the processes and workflows practiced by an organization, and the development and use of metrics to quantify reproducibility. METHODS/STUDY POPULATION: Within the Foundation of Discovery – Population Health Research, Center for Clinical and Translational Science, University of Utah, we are undertaking a project to streamline the study design and statistical analysis workflows and processes. As a first step we met with key stakeholders to understand the current practices by eliciting example statistical projects, and then developed process information models for different types of statistical needs using Lucidchart. We then reviewed these with the Foundation’s leadership and the Standards Committee to come up with ideal workflows and model, and defined key measurement points (such as those around study design, analysis plan, final report, requirements for quality checks, and double coding) for assessing reproducibility. As next steps we are using our finding to embed analytical and infrastructural approaches within the statisticians’ workflows. This will include data and code dissemination platforms such as Box, Bitbucket, and GitHub, documentation platforms such as Confluence, and workflow tracking platforms such as Jira. These tools will simplify and automate the capture of communications as a statistician work through a project. Data-intensive process will use process-workflow management platforms such as Activiti, Pegasus, and Taverna. RESULTS/ANTICIPATED RESULTS: These strategies for sharing and publishing study protocols, data, code, and results across the spectrum, active collaboration with the research team, automation of key steps, along with decision support. DISCUSSION/SIGNIFICANCE OF IMPACT: This analysis of statistical methods and process and computational methods to automate them ensure quality of statistical methods and reproducibility of research.


2011 ◽  
Vol 2 (1) ◽  
pp. 35
Author(s):  
Jaykaran ◽  
Deepak Saxena ◽  
Paresh Solanki ◽  
ND Kantharia

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