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PCA Score plot

InterdisciplinaryNature Methods

Principal Component Analysis(PCA)2D score plot, Show clustering relationships among samples.

Publisher: OOPLOT
Published: 2026/4/1
ID: 22
Usage: 0·Views: 0·Favorites: 0
PYTHONmatplotlibsklearn

Parameters (6)

  • Width (Default: 8)
  • Height (Default: 8)
  • DPI (Default: 300)
  • Transparency (Default: 0.7)
  • Point size (Default: 60)
  • and 1 more parameters...
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Template Inheritance

Parent:None
Children:None

Data Format Requirements

Required Columns

  • Sample label(First column)CategoricalRequired
Row Constraints: At least 6 rows

Example Data

You can directly copy and save as data.csv for upload.

Label,Feature1,Feature2,Feature3
GroupA,2.3,5.1,3.8
GroupA,2.5,5.3,3.9
GroupA,2.1,4.9,3.7
GroupA,2.4,5.2,3.6
GroupA,2.6,5.0,4.0
GroupB,7.2,6.5,8.1
GroupB,7.0,6.7,8.0
GroupB,7.3,6.4,8.2
GroupB,7.1,6.6,7.9
GroupB,7.4,6.8,8.3
GroupC,1.1,2.9,4.4
GroupC,1.3,3.0,4.5
GroupC,1.0,2.8,4.3
GroupC,1.2,3.1,4.2
GroupC,1.4,2.7,4.6
Chart Preview
PCA Score plot

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