WGCNA was employed to identify modules associated with the synthetic periodontitis dataset.
<p>(A, B) Based on scale independence and average connectivity, β = 8 was considered the optimal soft-thresholding value. (C) Gene clustering tree with multiple partitioned modules. Different clusters are connected by different colors. (D) Heatmap of adjacency of feature genes.</p>
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| Main Author: | Zhifeng Wu (303016) (author) |
|---|---|
| Other Authors: | Fan Zhang (46132) (author), Yuan Wang (14955) (author), Chunjiang Liu (125011) (author), Zhaokun Sun (19197309) (author), Xiaoqi Tang (12996656) (author), Liming Tang (2231494) (author) |
| Published: |
2025
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