Package: wavFeatExt 1.0.0

Maharani Ahsani Ummi
wavFeatExt: Wavelet-based Feature Extraction for Copy-number Alteration Data
Provides tools for simulating copy-number alteration (CNA) profiles, applying a non-decimated Haar wavelet transform to genomic signals, and extracting wavelet-derived features for use in supervised learning. Multiple machine learning methods including lasso and elastic-net regularisation, random forest, partial least squares, neural networks and k-nearest neighbours are implemented to train predictive models from genomic feature vectors. The workflow enables end-to-end analysis from CNA simulation to feature extraction and classification.
Authors:
wavFeatExt_1.0.0.tar.gz
wavFeatExt_1.0.0.zip(r-4.7)wavFeatExt_1.0.0.zip(r-4.6)wavFeatExt_1.0.0.zip(r-4.5)
wavFeatExt_1.0.0.tgz(r-4.6-any)wavFeatExt_1.0.0.tgz(r-4.5-any)
wavFeatExt_1.0.0.tar.gz(r-4.7-any)wavFeatExt_1.0.0.tar.gz(r-4.6-any)
wavFeatExt_1.0.0.tgz(r-4.6-emscripten)
manual.pdf |manual.html✨
card.svg |card.png
wavFeatExt/json (API)
NEWS
| # Install 'wavFeatExt' in R: |
| install.packages('wavFeatExt', repos = c('https://bioc-release.r-universe.dev', 'https://cloud.r-project.org')) |
Bug tracker:https://github.com/maharaniau/wavfeatext/issues
On BioConductor:wavFeatExt-1.1.0(bioc 3.24)wavFeatExt-1.0.0(bioc 3.23)
copynumbervariationgenomicvariationfeatureextractionclassification
Last updated from:6656f3d4e4 (on RELEASE_3_23). Checks:1 NOTE, 9 OK. Indexed: no.
| Target | Result | Time | Files | Syslog |
|---|---|---|---|---|
| bioc-checks | NOTE | 174 | ||
| linux-devel-x86_64 | OK | 238 | ||
| source / vignettes | OK | 202 | ||
| linux-release-x86_64 | OK | 244 | ||
| macos-release-arm64 | OK | 115 | ||
| macos-oldrel-arm64 | OK | 106 | ||
| windows-devel | OK | 121 | ||
| windows-release | OK | 128 | ||
| windows-oldrel | OK | 118 | ||
| wasm-release | OK | 129 |
Exports:CBSclassifyPcaIcaclassifyWavFeatExtgetIcagetPcanhwtsegsimulateCNAwavFeatExt
Dependencies:caretclasscliclockcodetoolscpp11data.tableDerivdiagramdigestDNAcopydplyre1071farverforeachfuturefuture.applygenericsggplot2glmnetglobalsgluegowergtablehardhaticaipredisobanditeratorsKernSmoothlabelinglatticelavalifecyclelistenvlubridatemagrittrMASSMatrixmatrixStatsModelMetricsneuralnetnlmennetnumDerivparallellypillarpkgconfigplsplyrpROCprodlimprogressrproxypurrrR6randomForestRColorBrewerRcppRcppEigenrecipesreshape2rlangrpartS7scalesshapesparsevctrsSQUAREMstringistringrsurvivaltibbletidyrtidyselecttimechangetimeDatetzdbutf8vctrsviridisLitewavethreshwithr