{"package":"LFDREmpiricalBayes","ecosystem":"cran","latest_version":"1.0","description":"Estimating Local False Discovery Rates Using Empirical Bayes Methods. New empirical Bayes methods aiming at analyzing the association of single nucleotide polymorphisms (SNPs) to some particular disease are implemented in this package. The package uses local false discovery rate (LFDR) estimates of SNPs within a sample population defined as a  \"reference class\" and di","license":"GPL-3","license_risk":"strong_copyleft","commercial_use_notes":"GPL-3.0: derivative works must release source under GPL; includes explicit patent grant.","homepage":"https://davidbickel.com","repository":"https://CRAN.R-project.org/package=LFDREmpiricalBayes","downloads_weekly":157,"health":{"score":42,"risk":"high","breakdown":{"maintenance":0,"popularity":3,"security":25,"maturity":12,"community":2},"deprecated":false,"max_score":100},"vulnerabilities":{"count":0,"critical":0,"high":0,"medium":0,"low":0,"details":[]},"versions":{"latest":"1.0","total_count":0,"recent":[]},"metadata":{"deprecated":false,"deprecated_message":null,"maintainers_count":1,"first_published":"2017-09-27 09:11:52","last_published":"2017-09-27T08:08:46+00:00","dependencies_count":3,"dependencies":["matrixStats","stats","R6"]},"github_stats":null,"bundle":null,"typescript":null,"known_issues":{"bugs_count":0,"bugs_severity":{},"status_breakdown":{},"link":null,"scope":"none"},"historical_compromise":null,"recommendation":{"action":"safe_to_use","issues":[],"use_version":"1.0","version_hint":null,"summary":"LFDREmpiricalBayes@1.0 is safe to use (health: 42/100)"},"version_scoped":null,"requested_version":null,"_cache":"miss","_response_ms":371,"_powered_by":"depscope.dev — free package intelligence for AI agents","typosquat":{"is_suspected":false},"maintainer_trust":{"available":false},"malicious":{"is_malicious":false},"scorecard":{"available":false},"quality":{"available":false},"version_history_summary":{"total_versions":1,"first_release_age_days":3138,"last_release_days_ago":3138,"avg_days_between_releases":null,"release_velocity":"stale"}}