| name | biorxiv-database |
| description | Query bioRxiv/medRxiv preprints via REST API. Search by DOI, category, or date range; retrieve metadata (title, abstract, authors, category, DOI, version history) and PDFs. No auth. For peer-reviewed biomedical use pubmed-database; broader scholarly search use openalex-database. |
| license | CC0-1.0 |
bioRxiv / medRxiv Preprint Database
Overview
bioRxiv (biology) and medRxiv (health sciences) are free preprint servers hosting 200,000+ and 50,000+ manuscripts, respectively, before or alongside peer review. The unified REST API provides programmatic access to preprint metadata (title, abstract, authors, category, DOI, version history) without authentication. Preprints are available as PDF and can be retrieved by DOI, date range, or category.
When to Use
- Finding the most current research in fast-moving fields before peer review (e.g., infectious disease during outbreaks)
- Monitoring weekly preprint submissions in a specific discipline category (e.g., bioinformatics, genomics, neuroscience)
- Retrieving metadata and abstracts for a set of bioRxiv DOIs for literature screening
- Building a corpus of preprints to track the preprint-to-publication pipeline
- Checking whether a specific preprint has been updated or published in a peer-reviewed journal
- For peer-reviewed biomedical literature use
pubmed-database; for all disciplines use openalex-database
Prerequisites
- Python packages:
requests, pandas
- Data requirements: bioRxiv/medRxiv DOIs, date ranges, or category names
- Environment: internet connection; no API key or authentication required
- Rate limits: no stated hard limit; use reasonable delays for bulk queries
pip install requests pandas
Quick Start
import requests
BASE = "https://api.biorxiv.org"
r = requests.get(f"{BASE}/details/biorxiv/2024-01-01/2024-01-07/0",
params={"category": "bioinformatics"})
r.raise_for_status()
data = r.json()
print(f"Total preprints: {int(data['messages'][0]['total'])}")
for article in data["collection"][:3]:
print(f"\n{article['title'][:80]}")
print(f" Authors : {article['authors'][:60]}")
print(f" DOI : {article['doi']}")
print(f" Category: {article['category']}")
Core API
Query 1: Date-Range Preprint Listing
Retrieve all preprints posted within a date range, optionally filtered by category.
import requests, pandas as pd
BASE = "https://api.biorxiv.org"
def get_preprints(server, date_from, date_to, cursor=0, category=None):
"""
server: 'biorxiv' or 'medrxiv'
date_from, date_to: 'YYYY-MM-DD' strings
cursor: page offset (increments of 100)
"""
url = f"{BASE}/details/{server}/{date_from}/{date_to}/{cursor}"
r = requests.get(url)
r.raise_for_status()
return r.json()
data = get_preprints("biorxiv", "2024-01-01", "2024-01-03")
total = int(data["messages"][0]["total"])
print(f"bioRxiv preprints Jan 1-3, 2024: {total}")
rows = []
for article in data["collection"][:10]:
rows.append({
"doi": article["doi"],
"title": article["title"],
"authors": article["authors"][:80],
"category": article["category"],
"date": article["date"],
"version": article["version"],
})
df = pd.DataFrame(rows)
print(df[["title", "category", "date"]].head())
def get_all_preprints(server, date_from, date_to, max_results=500):
all_articles = []
cursor = 0
while len(all_articles) < max_results:
data = get_preprints(server, date_from, date_to, cursor)
collection = data["collection"]
if not collection:
break
all_articles.extend(collection)
total = int(data["messages"][0]["total"])
cursor += 100
if cursor >= total:
break
return all_articles[:max_results]
articles = get_all_preprints("biorxiv", "2024-01-01", "2024-01-07")
print(f"Retrieved {len(articles)} preprints from first week of 2024")
Query 2: Preprint Detail by DOI
Retrieve full metadata and version history for a specific preprint by DOI.
import requests
BASE = "https://api.biorxiv.org"
doi = "10.1101/2024.01.01.000001"
def get_by_doi(server, doi):
r = requests.get(f"{BASE}/details/{server}/{doi}")
r.raise_for_status()
return r.json()
r = requests.get(f"{BASE}/details/biorxiv/10.1101/2024.05.28.596311")
if r.ok:
data = r.json()
articles = data.get("collection", [])
if articles:
art = articles[-1]
print(f"Title : {art['title']}")
print(f"Authors : {art['authors'][:100]}")
print(f"Category: {art['category']}")
print(f"Date : {art['date']}")
print(f"Version : {art['version']}")
print(f"DOI : {art['doi']}")
print(f"Abstract (first 300): {art['abstract'][:300]}")
Query 3: Published Preprint Lookup
Check if a preprint has been published in a peer-reviewed journal.
import requests
BASE = "https://api.biorxiv.org"
def check_published(server, doi):
"""Check if a preprint DOI has a corresponding published article."""
r = requests.get(f"{BASE}/publisher/{server}/{doi}")
r.raise_for_status()
data = r.json()
return data.get("collection", [])
doi = "10.1101/2024.05.28.596311"
published = check_published("biorxiv", doi)
if published:
pub = published[0]
print(f"Published in: {pub.get('published_journal')}")
print(f"Published DOI: {pub.get('published_doi')}")
else:
print(f"Preprint {doi} has not been published yet (or not tracked)")
Query 4: Category-Based Monitoring
Monitor preprints by specific research category.
import requests, pandas as pd
from datetime import date, timedelta
BASE = "https://api.biorxiv.org"
def weekly_category_digest(category, days_back=7):
"""Get preprints from last N days for a specific category."""
today = date.today()
date_from = (today - timedelta(days=days_back)).strftime("%Y-%m-%d")
date_to = today.strftime("%Y-%m-%d")
all_articles = []
cursor = 0
while True:
r = requests.get(f"{BASE}/details/biorxiv/{date_from}/{date_to}/{cursor}")
data = r.json()
batch = [a for a in data["collection"] if category.lower() in a["category"].lower()]
all_articles.extend(batch)
if len(data["collection"]) < 100:
break
cursor += 100
return pd.DataFrame(all_articles)[["doi", "title", "authors", "date"]] if all_articles else pd.DataFrame()
df = weekly_category_digest("genomics", days_back=3)
print(f"Recent genomics preprints: {len(df)}")
print(df[["title", "date"]].head())
Query 5: medRxiv Clinical/Health Research
Query medRxiv for health and clinical science preprints.
import requests, pandas as pd
BASE = "https://api.biorxiv.org"
r = requests.get(f"{BASE}/details/medrxiv/2024-01-01/2024-01-07/0")
r.raise_for_status()
data = r.json()
total = int(data["messages"][0]["total"])
print(f"medRxiv preprints Jan 1-7, 2024: {total}")
from collections import Counter
category_counts = Counter(a["category"] for a in data["collection"])
print("\nTop categories:")
for cat, count in category_counts.most_common(5):
print(f" {cat}: {count}")
Query 6: Bulk DOI Resolution and Abstract Extraction
Retrieve abstracts for a list of bioRxiv DOIs.
import requests, time, pandas as pd
BASE = "https://api.biorxiv.org"
dois = [
"10.1101/2024.05.28.596311",
"10.1101/2023.11.28.569048",
"10.1101/2023.03.07.531523",
]
rows = []
for doi in dois:
r = requests.get(f"{BASE}/details/biorxiv/{doi}")
if r.ok:
collection = r.json().get("collection", [])
if collection:
art = collection[-1]
rows.append({
"doi": doi,
"title": art.get("title"),
"category": art.get("category"),
"date": art.get("date"),
"abstract": art.get("abstract", "")[:300],
})
time.sleep(0.2)
df = pd.DataFrame(rows)
if not df.empty:
df.to_csv("preprint_abstracts.csv", index=False)
print(df[["doi", "title", "category"]].to_string(index=False))
else:
print("No valid preprints found for provided DOIs")
Key Concepts
API Endpoint Structure
The bioRxiv API follows the pattern: https://api.biorxiv.org/details/{server}/{interval}/{cursor}
server: biorxiv or medrxiv
interval: either a DOI (for single record) or date_from/date_to (for date range)
cursor: pagination offset (0, 100, 200…)
Version Tracking
Preprints can be updated; each update creates a new version (v1, v2, v3…). The API returns all versions chronologically; the last item in collection is always the most recent.
Common Workflows
Workflow 1: Weekly Preprint Digest Pipeline
Goal: Automatically collect last week's preprints in target categories and export for review.
import requests, time, pandas as pd
from datetime import date, timedelta
BASE = "https://api.biorxiv.org"
TARGET_CATEGORIES = ["bioinformatics", "genomics", "systems biology"]
DAYS_BACK = 7
today = date.today()
date_from = (today - timedelta(days=DAYS_BACK)).strftime("%Y-%m-%d")
date_to = today.strftime("%Y-%m-%d")
print(f"Fetching bioRxiv preprints from {date_from} to {date_to}")
all_articles = []
cursor = 0
while True:
r = requests.get(f"{BASE}/details/biorxiv/{date_from}/{date_to}/{cursor}")
r.raise_for_status()
data = r.json()
batch = data["collection"]
if not batch:
break
all_articles.extend(batch)
total = int(data["messages"][0]["total"])
cursor += 100
if cursor >= total:
break
time.sleep(0.1)
filtered = [a for a in all_articles
if any(cat in a.get("category", "").lower() for cat in TARGET_CATEGORIES)]
df = pd.DataFrame(filtered)[["doi", "title", "authors", "category", "date"]]
df = df.drop_duplicates(subset="doi")
output_file = f"biorxiv_digest_{date_to}.csv"
df.to_csv(output_file, index=False)
print(f"\nSaved {len(df)} preprints across {len(TARGET_CATEGORIES)} categories → {output_file}")
print(df[["title", "category", "date"]].head(5).to_string(index=False))
Workflow 2: Preprint-to-Publication Tracker
Goal: For a list of preprint DOIs, check which have been published and retrieve publication details.
import requests, time, pandas as pd
BASE = "https://api.biorxiv.org"
preprint_dois = [
"10.1101/2024.05.28.596311",
"10.1101/2023.11.28.569048",
]
results = []
for doi in preprint_dois:
r_meta = requests.get(f"{BASE}/details/biorxiv/{doi}")
meta = {}
if r_meta.ok and r_meta.json().get("collection"):
art = r_meta.json()["collection"][-1]
meta = {"title": art["title"], "category": art["category"],
"preprint_date": art["date"]}
r_pub = requests.get(f"{BASE}/publisher/biorxiv/{doi}")
published = {}
if r_pub.ok and r_pub.json().get("collection"):
pub = r_pub.json()["collection"][0]
published = {"journal": pub.get("published_journal"),
"pub_doi": pub.get("published_doi")}
results.append({"preprint_doi": doi, **meta, **published})
time.sleep(0.25)
df = pd.DataFrame(results)
print(df.to_string(index=False))
df.to_csv("preprint_publication_status.csv", index=False)
Key Parameters
| Parameter | Module | Default | Range / Options | Effect |
|---|
server | URL path | required | "biorxiv", "medrxiv" | Select preprint server |
date_from | URL path | required | "YYYY-MM-DD" | Start of date range |
date_to | URL path | required | "YYYY-MM-DD" | End of date range |
cursor | URL path | 0 | 0, 100, 200… | Pagination offset (100 per page) |
category | Filter | — | e.g., "bioinformatics" | Category name substring match (post-filter) |
version | — | all versions | — | API returns all versions; use [-1] for latest |
Best Practices
-
Always take the last element for latest version: The collection array is sorted oldest-to-newest version. Use collection[-1] to get the most current version of a preprint.
-
Post-filter by category: The API does not natively filter by category; retrieve all preprints for a date range and filter client-side using if category in article["category"].lower().
-
Respect server resources: Add time.sleep(0.2) between individual DOI lookups; avoid bulk hammering the API.
-
Cross-check with PubMed: The publisher endpoint reveals when a preprint is published; use pubmed-database to retrieve the full peer-reviewed article metadata.
-
Handle missing abstracts: Some preprints have empty abstract fields. Always guard with art.get("abstract", "") or "No abstract available".
Common Recipes
Recipe: Download Preprint PDF (Cloudflare-aware)
When to use: Retrieve full-text PDF for a bioRxiv preprint. Caveat: as of 2026, www.biorxiv.org is fronted by Cloudflare's anti-bot challenge — direct requests.get(..., headers={"User-Agent": "Mozilla/5.0"}) consistently returns HTTP 403 ("Just a moment...") even with a Session and a landing-page warmup. The pattern below attempts a best-effort download with realistic browser headers, then falls back to EuropePMC for metadata if blocked.
import requests
def download_biorxiv_pdf(doi, out_path=None):
"""Best-effort PDF download. If Cloudflare blocks, return False so the caller
can fall back to EuropePMC metadata or open the landing page in a browser."""
pdf_url = f"https://www.biorxiv.org/content/{doi}.full.pdf"
s = requests.Session()
s.headers.update({
"User-Agent": ("Mozilla/5.0 (X11; Linux x86_64) AppleWebKit/537.36 "
"(KHTML, like Gecko) Chrome/124.0.0.0 Safari/537.36"),
"Accept": "text/html,application/xhtml+xml,application/xml;q=0.9,application/pdf,*/*;q=0.8",
"Accept-Language": "en-US,en;q=0.5",
})
s.get(f"https://www.biorxiv.org/content/{doi}v1", timeout=30)
r = s.get(pdf_url, timeout=60)
if r.ok and r.content.startswith(b"%PDF"):
out = out_path or f"{doi.replace('/', '_')}.pdf"
with open(out, "wb") as f:
f.write(r.content)
print(f"Downloaded {out} ({len(r.content)//1024} KB)")
return True
print(f"PDF blocked (HTTP {r.status_code}); falling back to metadata-only via EuropePMC")
return False
def europepmc_metadata(doi):
"""Fetch preprint metadata via EuropePMC when bioRxiv PDF is blocked.
EuropePMC indexes bioRxiv as source 'PPR' and exposes a stable landing URL."""
r = requests.get("https://www.ebi.ac.uk/europepmc/webservices/rest/search",
params={"query": f"DOI:{doi}", "format": "json"}, timeout=30)
r.raise_for_status()
hits = r.json().get("resultList", {}).get("result", [])
if not hits:
return None
h = hits[0]
return {
"source": h.get("source"),
"epmc_id": h.get("id"),
"title": h.get("title"),
"landing_url": f"https://europepmc.org/article/{h.get('source')}/{h.get('id')}",
}
doi = "10.1101/2024.05.28.596311"
if not download_biorxiv_pdf(doi):
meta = europepmc_metadata(doi)
print(f" EuropePMC landing: {meta['landing_url']}")
print(f" Title: {meta['title'][:80]}")
Recipe: Count Preprints by Category
When to use: Analyze the distribution of preprints across bioRxiv categories in a time window.
import requests, pandas as pd
from collections import Counter
r = requests.get("https://api.biorxiv.org/details/biorxiv/2024-01-01/2024-01-07/0")
data = r.json()
total = int(data["messages"][0]["total"])
all_articles = data["collection"]
for cursor in range(100, min(total, 1000), 100):
r2 = requests.get(f"https://api.biorxiv.org/details/biorxiv/2024-01-01/2024-01-07/{cursor}")
all_articles.extend(r2.json()["collection"])
counts = Counter(a["category"] for a in all_articles)
df = pd.DataFrame(counts.most_common(), columns=["category", "count"])
print(df.head(10).to_string(index=False))
Recipe: Check if Preprint Has Been Published
When to use: Quick single-preprint publication check.
import requests
doi = "10.1101/2024.05.28.596311"
r = requests.get(f"https://api.biorxiv.org/publisher/biorxiv/{doi}")
collection = r.json().get("collection", [])
if collection:
print(f"Published: {collection[0]['published_journal']} | DOI: {collection[0]['published_doi']}")
else:
print("Not published or not tracked")
Troubleshooting
| Problem | Cause | Solution |
|---|
collection is empty | DOI not found or date range has no results | Verify DOI format (starts with 10.1101/); check date range |
| Duplicate preprints in results | Multiple versions returned | Deduplicate by DOI: df.drop_duplicates(subset='doi', keep='last') |
| Missing abstract field | Some preprints don't have structured abstracts | Guard with art.get("abstract", "") or "N/A" |
total count vs retrieved mismatch | New preprints added during pagination | Accept approximate totals; preprints are added continuously |
| PDF download blocked (HTTP 403 "Just a moment...") | Cloudflare anti-bot on www.biorxiv.org/.../*.full.pdf (cannot be bypassed by a Mozilla/5.0 UA alone, nor by a Session + landing-page warmup) | Try the Session + warmup recipe; if still blocked, fall back to EuropePMC (source=PPR) for metadata, or fetch the PDF interactively from the bioRxiv landing page in a browser |
cursor >= total never triggers; loop runs forever | data['messages'][0]['total'] is returned as a string (e.g. '1119'); int_cursor >= str_total raises TypeError or compares lexically | Cast explicitly: int(data["messages"][0]["total"]) in every pagination loop |
collection empty for a specific DOI | The DOI never resolved to a real preprint (e.g. fake placeholder like 2023.01.01.000001, or a stale/withdrawn DOI) | Verify the DOI on https://www.biorxiv.org/content/{doi}v1 first; recent DOIs from a date-range listing are the safest examples |
| Slow pagination for large date ranges | Large number of preprints | Use narrower date windows (3-7 days) for busy periods |
Related Skills
pubmed-database — Peer-reviewed biomedical literature for verifying published versions of preprints
openalex-database — Broader scholarly index including bioRxiv content after indexing lag
literature-review — Guide for incorporating preprints into systematic reviews
scientific-brainstorming — Using preprint alerts as input for hypothesis generation
References