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相关概念视频

Geometric Mean01:15

Geometric Mean

3.4K
The mean is a measure of the central tendency of a data set. In some data sets, the data is inherently multiplicative, and the arithmetic mean is not useful. For example, the human population multiplies with time, and so does the credit amount of financial investment, as the interest compounds over successive time intervals.
In cases of multiplicative data, the geometric mean is used for statistical analysis. First, the product of all the elements is taken. Then, if there are n elements in the...
3.4K
Trimmed Mean01:10

Trimmed Mean

2.9K
While measuring the mean of a data set, care needs to be taken when associating the mean to its central tendency. The same goes for the arithmetic mean, the geometric mean, or the harmonic mean. This is because the presence of a single outlier data value can significantly affect the mean. That is, the mean is sensitive to fluctuations in the data set.
Although certain measures of central tendency are not sensitive to outliers, there are alternative versions of the mean that get around the...
2.9K
Harmonic Mean01:09

Harmonic Mean

3.1K
The arithmetic mean is usually skewed towards the larger values in the data set. Therefore, to avoid this inherent bias towards smaller values, the harmonic mean is used.
Take the example of the speed of a car, which is the measure of the rate of distance traveled. If the vehicle traverses the same distance back-and-forth, its average speed equals the total distance traveled divided by the total time taken. However, if the car moves with varying speeds, then the arithmetic mean is more skewed...
3.1K
Median01:08

Median

18.0K
Besides mean, the median is a widely used measure of central tendency. Typically, median is defined as the central or middle value of a data set, measured by arranging the data elements in an increasing or decreasing order. Since this middle value is not affected by the precise numerical values of the outliers or fluctuations, it is insensitive to them. Hence, in cases where a data set may have outliers or the extreme values are not known, the median is a better measure of the central tendency...
18.0K
Arithmetic Mean01:08

Arithmetic Mean

13.5K
The arithmetic mean is the most commonly used measure of the central tendency of a data set. It is defined as the sum of all the elements constituting the data set, divided by the total number of elements. It is sometimes loosely referred to as the “average.”
When all the values in a data set are not unique, the sum in the numerator can be calculated by multiplying each distinct value by its frequency.
Sometimes, the arithmetic mean of a sample can be affected by a few data points...
13.5K
Weighted Mean00:57

Weighted Mean

5.0K
While taking the arithmetic, geometric, or harmonic mean of a sample data set, equal importance is assigned to all the data points. However, all the values may not always be equally important in some data sets. An intrinsic bias might make it more important to give more weightage to specific values over others.
For example, consider the number of goals scored in the matches of a tournament. While computing the average number of goals scored in the tournament, it may be more important to...
5.0K

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相关实验视频

Updated: Jun 14, 2025

Automated, Quantitative Cognitive/Behavioral Screening of Mice: For Genetics, Pharmacology, Animal Cognition and Undergraduate Instruction
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Automated, Quantitative Cognitive/Behavioral Screening of Mice: For Genetics, Pharmacology, Animal Cognition and Undergraduate Instruction

Published on: February 26, 2014

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重温折叠变化计算:偏好中位数或几何平均值而不是以算术平均值为基础的方法.

Jörn Lötsch1,2,3, Dario Kringel1, Alfred Ultsch4

  • 1Institute of Clinical Pharmacology, Goethe University, Theodor Stern Kai 7, 60590 Frankfurt am Main, Germany.

Biomedicines
|August 29, 2024
PubMed
概括
此摘要是机器生成的。

计算omics数据中的折叠变化的算术平均值方法是不可靠的. 强大的方法,如中位数或几何平均值,可以提高生物医学研究的准确性和可重复性.

关键词:
人工智能的人工智能是人工智能.数据科学数据科学不同的表达方式,不同的表达方式.俄米克斯 (Omics) 是一个电子产品.

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Measuring Membrane Lipid Turnover with the pH-sensitive Fluorescent Lipid Analog ND6

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Quantitative Live Cell Fluorescence-microscopy Analysis of Fission Yeast
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Quantitative Live Cell Fluorescence-microscopy Analysis of Fission Yeast

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相关实验视频

Last Updated: Jun 14, 2025

Automated, Quantitative Cognitive/Behavioral Screening of Mice: For Genetics, Pharmacology, Animal Cognition and Undergraduate Instruction
16:23

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Measuring Membrane Lipid Turnover with the pH-sensitive Fluorescent Lipid Analog ND6
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科学领域:

  • 生物统计学 生物统计学
  • 生物信息学是一种生物信息学.
  • 基因组学就是基因组学.
  • 蛋白质组学是指蛋白质组学.
  • 代谢学 代谢学 代谢学

背景情况:

  • 折叠变化是分析奥米克数据的关键指标.
  • 不一致的折叠变化的计算和报告引入了差异.
  • 这项研究解决了对标准化折叠变换方法的需求.

研究的目的:

  • 评估各种折叠变化计算方法.
  • 为了确定一个首选的,强大的方法对OMIC数据分析.
  • 提高生物医学研究成果的可复制性.

主要方法:

  • 生成的人工数据集具有不同的分布 (例如,正常,日志-正常).
  • 与模拟数据中的已知值进行折叠变化计算的比较.
  • 分析了多omics数据集,以评估现实世界的适用性.

主要成果:

  • 基于算术平均值的折叠变化计算经常不准确.
  • 不准确性表现在不同的子组分布或标准偏差.
  • 其他方法 (中位数,几何平均值) 显示出更大的稳定性.

结论:

  • 算术平均值是计算折叠变化的劣质方法.
  • 中位数,几何平均值或配对折叠变换方法提供了更好的可靠性.
  • 标准化,强大的折叠变化计算和透明的报告对于准确的解释和可重复性至关重要.