--- annotations_creators: - machine-generated language_creators: - found language: - en license: cc-by-nc-4.0 multilinguality: monolingual pretty_name: "USDA Phytochemical & Ethnobotanical Database — Enriched v2.0" size_categories: - 100K # USDA Phytochemical & Ethnobotanical Database — Enriched v2.0 **The only phytochemical dataset combining USDA botanical records, PubMed citation counts, ClinicalTrials.gov study counts, ChEMBL bioactivity scores, and USPTO patent density — in production-ready JSON + Parquet.** [![License: CC BY-NC 4.0](https://img.shields.io/badge/Sample-CC%20BY--NC%204.0-lightgrey.svg)](https://creativecommons.org/licenses/by-nc/4.0/) [![Sample](https://img.shields.io/badge/Sample-400%20rows-brightgreen)](https://huggingface.co/datasets/wirthal1990-tech/USDA-Phytochemical-Database-JSON) [![Full Dataset](https://img.shields.io/badge/Full%20Dataset-104%2C388%20rows-blue)](https://ethno-api.com) [![Format](https://img.shields.io/badge/Format-JSON%20%2B%20Parquet-orange)](https://ethno-api.com) [![HuggingFace](https://img.shields.io/badge/%F0%9F%A4%97%20HuggingFace-Dataset-yellow)](https://huggingface.co/datasets/wirthal1990-tech/USDA-Phytochemical-Database-JSON) [**Free 400-Row Sample ↓**](#quickstart) · [**Single Entity €699 →**](https://buy.stripe.com/00w6oGgFh58v6Toeqsebu02?utm_source=github&utm_medium=readme&utm_campaign=launch_2026_03) · [**Team €1.349 →**](https://buy.stripe.com/dRm7sK9cP1Wj0v06Y0ebu03?utm_source=github&utm_medium=readme&utm_campaign=launch_2026_03) · [**Enterprise €1.699 →**](https://buy.stripe.com/dRm28q0Gj1WjdhM6Y0ebu04?utm_source=github&utm_medium=readme&utm_campaign=launch_2026_03) > **Enrichment status (March 2026):** All four enrichment layers (PubMed, ClinicalTrials.gov, ChEMBL, PatentsView) are **complete and final**. The free 400-row sample contains real enrichment values. --- | Records | Compounds | Species | Enrichment Layers | |--------:|----------:|--------:|------------------:| | **104,388** | **24,771** | **2,315** | **4** | --- ## Schema (v2.0) | Column | Type | Nulls | Description | |--------|------|-------|-------------| | `chemical` | `string` | 0% | Standardised compound name (USDA Duke’s nomenclature) | | `plant_species` | `string` | 0% | Binomial Latin species name | | `application` | `string` | ~40% | Traditional medicinal application (e.g. “Antiinflammatory”) | | `dosage` | `string` | ~55% | Reported dosage, concentration, or IC50 value | | `pubmed_mentions_2026` | `int32` | 0% | Total PubMed publications mentioning this compound (March 2026 snapshot) | | `clinical_trials_count_2026` | `int32` | 0% | ClinicalTrials.gov study count per compound (March 2026) | | `chembl_bioactivity_count` | `int32` | 0% | ChEMBL documented bioactivity measurement count | | `patent_count_since_2020` | `int32` | 0% | US patents since 2020-01-01 mentioning compound (USPTO PatentsView) | --- ## Pricing & Licensing | Tier | Price | Includes | Purchase | |------|-------|----------|----------| | **Single Entity** | **€699** netto | JSON + Parquet + SHA-256 Manifest. 1 juristische Person, interne Nutzung. Perpetual license. | [**Buy Now →**](https://buy.stripe.com/00w6oGgFh58v6Toeqsebu02?utm_source=github&utm_medium=readme&utm_campaign=launch_2026_03) | | **Team** | **€1.349** netto | Alles aus Single + `duckdb_queries.sql` (20 Queries, 5 Kategorien) + `compound_priority_score.py` + 4 Pre-computed Views (Top-500 nach PubMed, Trials, Patent-Dichte, Anti-Inflammatory Panel). Unbegrenzte interne Nutzer einer juristischen Person. | [**Buy Now →**](https://buy.stripe.com/dRm7sK9cP1Wj0v06Y0ebu03?utm_source=github&utm_medium=readme&utm_campaign=launch_2026_03) | | **Enterprise** | **€1.699** netto | Alles aus Team + `snowflake_load.sql` + `chromadb_ingest.py` + `pinecone_ingest.py` + `embedding_guide.md` (ClinicalBERT, RAG-Pipelines) + Compound Opportunity Matrix + Clinical Pipeline Gaps CSV + Pre-chunked RAG JSONL. Multi-Entity / Konzernnutzung, interne Produktintegration erlaubt. | [**Buy Now →**](https://buy.stripe.com/dRm28q0Gj1WjdhM6Y0ebu04?utm_source=github&utm_medium=readme&utm_campaign=launch_2026_03) | > Gemäß § 19 UStG wird keine Umsatzsteuer berechnet. Alle Preise netto. One-time purchase — keine Subscription, keine wiederkehrenden Kosten. --- ## Why Not Build This Yourself? Normalising and cross-referencing 24,771 phytochemicals against four authoritative databases is not a weekend project: | Task | Hours | Cost @ $85/hr | |------|------:|---------------:| | USDA data cleaning + deduplication | 12h | $1,020 | | ClinicalTrials.gov async enricher | 8h | $680 | | ChEMBL REST + PubChem fallback pipeline | 10h | $850 | | PatentsView API integration | 8h | $680 | | Parquet export + SHA-256 manifest | 4h | $340 | | QA, assertions, null-count validation | 6h | $510 | | **Total** | **48–60h** | **~$4,080–$5,100** | **This dataset: €699 one-time. No subscription. No API calls. Full dataset delivered via email within 24h after purchase. See ethno-api.com.** ## Why This Dataset Exists Large language models hallucinate botanical taxonomy. A biotech team’s RAG pipeline confidently outputting “Quercetin found in 450 species at 2.3 mg/g” sounds plausible — but the real number of species in our data is 215, and dosage varies by three orders of magnitude depending on the plant part. The raw USDA Dr. Duke’s database is spread across 16 relational tables. Joining them correctly requires understanding non-obvious foreign keys, handling >40% null values in application fields, and normalising species names against accepted binomial nomenclature. Most teams give up after a week. ## Quickstart ### Python — Load 400-row sample ```python import pandas as pd url = "https://raw.githubusercontent.com/wirthal1990-tech/USDA-Phytochemical-Database-JSON/main/ethno_sample_400.json" df = pd.read_json(url) print(f"{df.shape[0]} records, {df['chemical'].nunique()} unique compounds") df.head() ``` ### PyArrow — Parquet (full dataset, after purchase) Full dataset delivered via email within 24h after purchase. See ethno-api.com. ```python import pyarrow.parquet as pq table = pq.read_table("ethno_dataset_2026_v2.parquet") print(f"Schema: {table.schema}") print(f"Rows: {table.num_rows} Memory: {table.nbytes / 1e6:.1f} MB") ``` ### DuckDB (analytical queries — sample included) ```python import duckdb result = duckdb.sql(""" SELECT chemical, MAX(pubmed_mentions_2026) AS pubmed_score, MAX(clinical_trials_count_2026) AS trial_count, MAX(chembl_bioactivity_count) AS bioassays, COUNT(DISTINCT plant_species) AS species_count FROM read_json_auto('ethno_sample_400.json') GROUP BY chemical ORDER BY trial_count DESC LIMIT 20 """) result.show() ``` ### HuggingFace Datasets ```python from datasets import load_dataset ds = load_dataset( "wirthal1990-tech/USDA-Phytochemical-Database-JSON", split="sample", trust_remote_code=False ) df = ds.to_pandas() print(f"Records: {len(df)} | Columns: {list(df.columns)}") df.head() ``` > **Note:** The `split="sample"` loads `ethno_sample_400.json` (400 rows, 8 columns). > The full 104,388-row dataset is available at [ethno-api.com](https://ethno-api.com). ## Sample Record Below is a real record from the dataset — QUERCETIN, one of the most-studied plant compounds: ```json { "chemical": "QUERCETIN", "plant_species": "Drimys winteri", "application": "5-Lipoxygenase-Inhibitor", "dosage": "IC50 (uM)=4", "pubmed_mentions_2026": 31310, "clinical_trials_count_2026": 81, "chembl_bioactivity_count": 2871, "patent_count_since_2020": 73 } ``` All 8 fields are populated for all 104,388 records in the full dataset. The free 400-row sample contains real, final enrichment values across all four layers. ## File Manifest | File | Size | Format | Access | |------|------|--------|--------| | `ethno_sample_400.json` | 108 KB | JSON | Free (this repo) | | `ethno_sample_400.parquet` | 20 KB | Parquet | Free (this repo) | | `quickstart.ipynb` | 9 KB | Notebook | Free (this repo) | | `ethno_dataset_2026_v2.json` | ~18 MB | JSON | Included in all tiers | | `ethno_dataset_2026_v2.parquet` | ~900 KB | Parquet | Included in all tiers | | `MANIFEST_v2.json` (SHA-256) | ~1 KB | JSON | Included in all tiers | | `duckdb_queries.sql` (20 Queries) | ~13 KB | SQL | Team + Enterprise | | `compound_priority_score.py` | ~5 KB | Python | Team + Enterprise | | `snowflake_load.sql` | ~6 KB | SQL | Enterprise | | `chromadb_ingest.py` | ~6 KB | Python | Enterprise | | `pinecone_ingest.py` | ~6 KB | Python | Enterprise | | `embedding_guide.md` | ~7 KB | Markdown | Enterprise | ## Data Sources & Methodology | Source | Access | Date | Method | |--------|--------|------|--------| | [USDA Dr. Duke’s Phytochemical and Ethnobotanical Databases](https://phytochem.nal.usda.gov/) | Public domain | 2026 | Full 16-table PostgreSQL import, normalized | | [NCBI PubMed](https://pubmed.ncbi.nlm.nih.gov/) | E-utilities API | March 2026 | `esearch` per compound, total publication count | | [ClinicalTrials.gov](https://clinicaltrials.gov/) | v2 API | March 2026 | Study count per compound name | | [ChEMBL](https://www.ebi.ac.uk/chembl/) | REST API (v34) | March 2026 | Bioactivity measurement count via molecule search | | [USPTO PatentsView](https://patentsview.org/) | REST API v1 | March 2026 | US patents since 2020-01-01 mentioning compound | All enrichment scripts are deterministic, checkpoint-resumable, and respect API rate limits. Source code available upon request for enterprise customers. ## Use Cases - **RAG Pipelines** — Ground LLM responses with verified phytochemical data. Each record has a PubMed evidence score — use it to weight retrieval results and filter hallucinations. - **Drug Discovery** — Prioritise natural product leads by combining PubMed citations, clinical trial presence, ChEMBL bioactivity depth, and patent landscape. One query replaces weeks of manual lit review. - **Market Intelligence** — Patent density score reveals which compounds are attracting commercial investment. Cross-reference with clinical trials to identify underexplored compounds with IP whitespace. - **Academic Research** — Pre-computed evidence scores save months of PubMed searching. The BibTeX citation block below makes this dataset citable in peer-reviewed publications. ## Dataset Versions | Version | Records | Schema | Status | |---------|--------:|--------|--------| | v1.0 | 104,388 | 5 columns (USDA baseline) | Deprecated | | **v2.0** | **104,388** | **8 columns (+ PubMed, ClinicalTrials, ChEMBL, Patents)** | **Current** | The free sample (`ethno_sample_400.json`) uses the v2.0 schema with final enrichment values across all four layers. ## License & Commercial Access - **Free 400-row sample**: [CC BY-NC 4.0](https://creativecommons.org/licenses/by-nc/4.0/) — use for evaluation, academic research, and prototyping. - **Single Entity License — €699** one-time: [**Buy →**](https://buy.stripe.com/00w6oGgFh58v6Toeqsebu02?utm_source=github&utm_medium=readme&utm_campaign=launch_2026_03) — 1 legal entity, internal use, perpetual. No redistribution. - **Team License — €1.349** one-time: [**Buy →**](https://buy.stripe.com/dRm7sK9cP1Wj0v06Y0ebu03?utm_source=github&utm_medium=readme&utm_campaign=launch_2026_03) — all employees of 1 legal entity, unlimited internal users, includes analytics toolkit. - **Enterprise License — €1.699** one-time: [**Buy →**](https://buy.stripe.com/dRm28q0Gj1WjdhM6Y0ebu04?utm_source=github&utm_medium=readme&utm_campaign=launch_2026_03) — multi-entity / group use, internal product integration rights, full RAG integration toolkit. > Gemäß § 19 UStG wird keine Umsatzsteuer berechnet. ## Citation ```bibtex @misc{ethno_api_v2_2026, title = {USDA Phytochemical \& Ethnobotanical Database --- Enriched v2.0}, author = {Wirth, Alexander}, year = {2026}, publisher = {Ethno-API}, url = {https://ethno-api.com}, note = {104,388 records, 24,771 unique chemicals, 2,315 plant species, 8-column schema with PubMed, ClinicalTrials, ChEMBL, and PatentsView enrichment} } ``` ## Contact - **Website**: [ethno-api.com](https://ethno-api.com) - **Email**: founder@ethno-api.com - **GitHub**: [@wirthal1990-tech](https://github.com/wirthal1990-tech) ---
Built by Alexander Wirth · PostgreSQL 15 · Python 3.12 · Hetzner CCX33