# Project State ## Project Reference See: .planning/PROJECT.md (updated 2026-02-11) **Core value:** Produce a high-confidence, multi-evidence-backed ranked list of under-studied cilia/Usher candidate genes that is fully traceable — every gene's inclusion is explainable by specific evidence, and every gap is documented. **Current focus:** Phase 4 in progress — Scoring and Integration ## Current Position Phase: 4 of 6 (Scoring and Integration) Plan: 3 of 3 in current phase (complete) Status: Phase 04 complete — CLI score command and comprehensive test coverage Last activity: 2026-02-11 — Completed 04-03-PLAN.md Progress: [████████░░] 75.0% (15/20 plans complete across all phases) ## Performance Metrics **Velocity:** - Total plans completed: 15 - Average duration: 5.1 min - Total execution time: 1.3 hours **By Phase:** | Phase | Plans | Total | Avg/Plan | |-------|-------|-------|----------| | 01 - Data Infrastructure | 4/4 | 14 min | 3.5 min/plan | | 02 - Prototype Evidence Layer | 2/2 | 8 min | 4.0 min/plan | | 03 - Core Evidence Layers | 6/6 | 52 min | 8.7 min/plan | | 04 - Scoring Integration | 3/3 | 10 min | 3.3 min/plan | **Recent Plan Details:** | Plan | Duration | Tasks | Files | |------|----------|-------|-------| | Phase 03 P04 | 8 min | 2 tasks | 8 files | | Phase 03 P05 | 10 min | 2 tasks | 8 files | | Phase 03 P06 | 13 min | 2 tasks | 10 files | | Phase 04 P01 | 4 min | 2 tasks | 4 files | | Phase 04 P02 | 3 min | 2 tasks | 4 files | | Phase 04 P03 | 3 min | 2 tasks | 4 files | ## Accumulated Context ### Decisions Decisions are logged in PROJECT.md Key Decisions table. Recent decisions affecting current work: - Python over R/Bioconductor for rich data integration ecosystem - Weighted rule-based scoring over ML for explainability - Public data only for reproducibility - Modular CLI scripts for flexibility during development - Virtual environment required for dependency isolation (01-01: PEP 668 externally-managed Python) - Auto-creation of directories on config load (01-01: data_dir, cache_dir field validators) - [01-02]: Warn on gene count outside 19k-22k range but don't fail (allows for Ensembl version variations) - [01-02]: HGNC success rate is primary validation gate (UniProt mapping tracked but not used for pass/fail) - [01-02]: Take first UniProt accession when multiple exist (simplifies data model) - [01-02]: Mock mygene in tests (avoids rate limits, ensures reproducibility) - [01-03]: DuckDB over SQLite for DataFrame storage (native polars/pandas integration, better analytics) - [01-03]: Provenance sidecar files alongside outputs (co-located metadata, bioinformatics standard pattern) - [01-04]: Click for CLI framework (standard Python CLI library with excellent UX) - [01-04]: Setup command uses checkpoint-restart pattern (gene universe fetch can take minutes) - [01-04]: Mock mygene in integration tests (avoids external API dependency, reproducible) - [02-01]: httpx over requests for streaming downloads (async-native, cleaner API) - [02-01]: structlog for structured logging (JSON-formatted, context-aware) - [02-01]: LOEUF normalization with inversion (lower LOEUF = more constrained = higher 0-1 score) - [02-01]: Quality flags instead of filtering (preserve all genes with measured/incomplete_coverage/no_data categorization) - [02-01]: NULL preservation pattern (unknown constraint != zero constraint, must not be conflated) - [02-01]: Lazy polars evaluation (LazyFrame until final collect() for query optimization) - [02-02]: load_to_duckdb uses CREATE OR REPLACE for idempotency (safe to re-run) - [02-02]: CLI evidence command group for extensibility (future evidence sources follow same pattern) - [02-02]: Checkpoint at table level (has_checkpoint checks DuckDB table existence) - [02-02]: Integration tests with synthetic fixtures (no external downloads, fast, reproducible) - [03-01]: Annotation tier thresholds: Well >= (20 GO AND 4 UniProt), Partial >= (5 GO OR 3 UniProt) - [03-01]: Composite annotation score weighting: GO 50%, UniProt 30%, Pathway 20% - [03-01]: NULL GO counts treated as zero for tier classification but preserved as NULL in data (conservative assumption) - [03-03]: UniProt REST API with batching (100 accessions) over bulk download for flexibility - [03-03]: InterPro API for supplemental domain annotations (10 req/sec rate limit) - [03-03]: Keyword-based cilia motif detection over ML for explainability (IFT, BBSome, ciliary, etc.) - [03-03]: Composite protein score weights: length 15%, domain 20%, coiled-coil 20%, TM 20%, cilia 15%, scaffold 10% - [03-03]: List(Null) edge case handling for proteins with no domains (cast to List(String)) - [03-04]: Evidence type terminology standardized to computational (not predicted) for consistency with bioinformatics convention - [03-04]: Proteomics absence stored as False (informative negative) vs HPA absence as NULL (unknown/not tested) - [03-04]: Curated proteomics reference gene sets (CiliaCarta, Centrosome-DB) embedded as Python constants for simpler deployment - [03-04]: Computational evidence (HPA Uncertain/Approved) downweighted to 0.6x vs experimental (Enhanced/Supported, proteomics) at 1.0x - [Phase 03-05]: Ortholog confidence based on HCOP support count (HIGH: 8+, MEDIUM: 4-7, LOW: 1-3) - [Phase 03-05]: NULL score for genes without orthologs (preserves NULL pattern) - [03-02]: HPA bulk TSV download over per-gene API (efficient for 20K genes) - [03-02]: GTEx retina/fallopian tube may be NULL (not in all versions) - [03-02]: CellxGene optional dependency with --skip-cellxgene flag (large install) - [03-02]: Tau specificity requires complete tissue data (any NULL -> NULL Tau) - [03-02]: Expression score composite: 40% enrichment + 30% Tau + 30% target rank - [03-02]: Inner ear data primarily from CellxGene scRNA-seq (not HPA/GTEx bulk) - [03-06]: HTS hits prioritized over functional mentions in evidence tier hierarchy (direct > HTS > functional > incidental) - [03-06]: Quality-weighted scoring uses log2 normalization to mitigate well-studied gene bias (prevents TP53-like dominance) - [03-06]: Context weights cilia/sensory=2.0, cytoskeleton/polarity=1.0 for primary target prioritization - [03-06]: Rate limiting via decorator pattern (3 req/sec default, 10 req/sec with NCBI API key) - [04-01]: OMIM Usher genes (10) and SYSCILIA SCGS v2 core (28) as known gene positive controls - [04-01]: NULL-preserving weighted average: weighted_sum / available_weight (only non-NULL layers contribute) - [04-01]: Quality flags based on evidence_count (>=4 sufficient, >=2 moderate, >=1 sparse, 0 no_evidence) - [04-01]: Per-layer contribution tracking (score * weight) for explainability - [04-01]: ScoringWeights validation enforcing sum = 1.0 ± 1e-6 tolerance - [04-02]: scipy MAD-based outlier detection (>3 MAD threshold) for robust anomaly detection - [04-02]: Missing data thresholds: 50% warn, 80% error for graduated QC feedback - [04-02]: PERCENT_RANK validation computed before known gene exclusion (validates scoring system) - [04-02]: Top quartile validation criterion (median percentile >= 0.75 for known genes) - [04-03]: Score command follows evidence_cmd.py pattern for consistency - [04-03]: Separate --skip-qc and --skip-validation flags for flexible iteration - [04-03]: Tests use tmp_path fixtures for isolated DuckDB instances - [04-03]: Synthetic test data designed to ensure known genes rank highly (0.8-0.95 scores across all layers) ### Pending Todos None yet. ### Blockers/Concerns None yet. ## Session Continuity Last session: 2026-02-11 - Plan execution Stopped at: Completed 04-03-PLAN.md (CLI score command and comprehensive tests) Resume file: .planning/phases/04-scoring-integration/04-03-SUMMARY.md