Quantifying and Visualizing Hidden Preferential Aggregations Amid Heterogeneity
David H Nguyen

TL;DR
This paper introduces the NHS algorithm, transforming distance histograms into spatial heatmaps to visualize and quantify hidden aggregations in heterogeneous biological data, aiding clinical and molecular insights.
Contribution
The NHS algorithm provides a novel method to visualize and quantify spatial aggregations in heterogeneous biological systems using histogram-based heatmaps.
Findings
NHS effectively visualizes hidden spatial aggregations.
Heatmaps reveal loco-regional spatial associations.
Quantifies recurring patterns of aggregation.
Abstract
Biological systems often exhibit a heterogeneous arrangement of objects, such as assorted nuclear chromatin patterns in a tumor, assorted species of bacteria in biofilms, or assorted aggregates of subcellular particles. Principle Component Analysis (PCA) and Multiple Component Analysis (MCA) provide information about which features in multidimensional data aggregate, but do not provide in situ spatial information about these aggregations. This paper outlines the Numericized Histogram Score (NHS) algorithm, which converts the histogram distribution of shortest distances between objects into a continuous variable that can be represented as a spatial heatmap. A histogram can be transformed into an intensity value by assigning a weighting factor to each sequential bin. Each object in an image can be replaced by its NHS value, which when calibrated to a color scale results in a heatmap.…
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Taxonomy
TopicsAdvanced Clustering Algorithms Research · Face and Expression Recognition
