Statistical software is pivotal in data analysis and clinical trials by providing tools to analyze data, draw conclusions, and make predictions. These software packages range from simple data management applications to complex analytical platforms, supporting various statistical tests, models, and simulation techniques. Their significance lies in their ability to handle vast amounts of data with precision and efficiency, enabling researchers to validate hypotheses, identify trends, and make evidence-based decisions.

One widely recognized software is R, an open-source programming language and environment. R is favored for its versatility in statistical analysis, offering a comprehensive library of statistical and graphical methods. It caters to various needs, from basic to advanced analysis, making it a popular choice among statisticians and researchers. Other possible options of software are:

SAS (Statistical Analysis System) is another powerful software known for its ability to process complex data sets. It is extensively used in clinical trial data analysis, healthcare research, and biostatistics. SAS provides a robust environment with tools for data management, statistical analysis, and report writing.

SPSS (Statistical Package for the Social Sciences), now IBM SPSS Statistics, offers a user-friendly interface for sophisticated data analysis. It is particularly valued in social science research for its comprehensive statistical tests, modeling capabilities, and ease of use in managing survey data.

With libraries such as Pandas, NumPy, and SciPy, Python has emerged as a significant player in statistical analysis. Its versatility and support for data manipulation, statistical modeling, and machine learning make it an excellent tool for academic and commercial research.

Stata is a comprehensive software suite that facilitates data management, statistical analysis, and graphics. It is well-suited for researchers in economics, sociology, political science, biomedicine, and epidemiology. Stata's ease of use and powerful data management capabilities make it ideal for longitudinal data analysis, survival analysis, and simulation studies.

MATLAB offers a numerical computing environment in clinical trials that excels in matrix operations, algorithm development, and data visualization. Its toolbox for biostatistics and bioinformatics is particularly useful for analyzing genomic data and developing computational biology models.

Lastly, Epi Info™, developed by the Centers for Disease Control and Prevention (CDC), is tailored for public health professionals. It assists in epidemiologic investigations by providing tools for data entry, database construction, and statistical analysis.

章から 16:

article

Now Playing

16.1 : Statistical Software for Data Analysis and Clinical Trials

Statistical Softwares

144 閲覧数

article

16.2 : データ分析ツールとしての Microsoft Excel の概要

Statistical Softwares

101 閲覧数

article

16.3 : MS-Excel関数を使用した簡単なデータ分析の実行

Statistical Softwares

67 閲覧数

article

16.4 : 社会科学統計パッケージ(SPSS)

Statistical Softwares

82 閲覧数

article

16.5 : Rの概要

Statistical Softwares

121 閲覧数

article

16.6 : 統計分析システム(SAS)

Statistical Softwares

32 閲覧数

article

16.7 : MATLAB の概要

Statistical Softwares

40 閲覧数

article

16.8 : Minitabの概要

Statistical Softwares

34 閲覧数

article

16.9 : エコノメトリックビュー(EViews)

Statistical Softwares

53 閲覧数

article

16.10 : スタッツグラフィックス

Statistical Softwares

50 閲覧数

article

16.11 : Microsoft Excel: 中心傾向、偏在、尖度の検出

Statistical Softwares

48 閲覧数

article

16.12 : Microsoft Excel:平均値、SD、SEのプロット

Statistical Softwares

43 閲覧数

article

16.13 : Microsoft Excel: 中央値、四分位範囲、およびボックス プロット

Statistical Softwares

39 閲覧数

article

16.14 : Microsoft Excel: ピアソンの相関関係

Statistical Softwares

61 閲覧数

article

16.15 : Microsoft Excel: 回帰分析

Statistical Softwares

138 閲覧数

See More

JoVE Logo

個人情報保護方針

利用規約

一般データ保護規則

研究

教育

JoVEについて

Copyright © 2023 MyJoVE Corporation. All rights reserved