Principal components were computed for normalized intensities from samples of the given tissue-chip combination. The first two principal components are.

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Presentation transcript:

Principal components were computed for normalized intensities from samples of the given tissue-chip combination. The first two principal components are shown with the axis indicating the amount of variance in each component as a percentage of the total. Organ section is indicated by marker colors, lab by marker shapes and gender by marker size.

Principal components were computed for normalized intensities from samples of the given tissue-chip combination. The first two principal components are shown in the plot with the axis indicating the amount of variance in each component as a percentage of the total. Lab is shown in different colors and gender is shown by different shapes.

Principal components were computed for normalized intensities from samples of the given tissue-chip combination. The first two principal components are shown in the plot with the axis indicating the amount of variance in each component as a percentage of the total. Lab is in different colors and gender is shown by different shapes.

Principal components were computed for normalized intensities from samples of the given tissue-chip combination. The first two principal components are shown in the plot with the axis indicating the amount of variance in each component as a percentage of the total. Lab is indicated by marker color, diet is shown in marker shape and fasting is indicated by marker size.

Principal components were computed for normalized intensities from samples of the given tissue-chip combination. The first two principal components are shown in the plot with the axis indicating the amount of variance in each component as a percentage of the total. Lab is indicated by marker color, gender is shown in marker shape and fasting is indicated by marker size.

Principal components were computed for normalized intensities from samples of the given tissue-chip combination. The first two principal components are shown in the plot with the axis indicating the amount of variance in each component as a percentage of the total. Lab is indicated by marker color, diet is shown in marker shape and fasting is indicated by marker size.

Principal components were computed for normalized intensities from samples of the given tissue-chip combination. The first two principal components are shown in the plot with the axis indicating the amount of variance in each component as a percentage of the total. Lab is indicated by marker color, gender is shown in marker shape and fasting is indicated by marker size.