Skills Data Science Medicinal Chemistry Compound Filtering

Medicinal Chemistry Compound Filtering

v20260601
medchem
This powerful Python library provides comprehensive medicinal chemistry filters for compound triage in drug discovery. Users can apply established drug-likeness rules (like Lipinski's Rule of Five, Veber, and CNS rules), detect structural alerts (PAINS, NIBR), calculate complexity metrics, and filter molecular libraries using a custom query language. It is essential for prioritizing hit compounds and optimizing lead structures.
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Overview

Medchem

Overview

Medchem is a Python library from datamol-io for molecular filtering and prioritization in drug discovery. Apply literature-derived drug-likeness rules, named alert catalogs, complexity thresholds, chemical-group detection, and a custom query language to triage compound libraries at scale. Filters are context-specific guidelines — combine with domain expertise and target knowledge.

Version note: Examples target medchem 2.0.5 (PyPI stable, Nov 2024). Requires Python ≥3.9. Depends on datamol and RDKit (installed automatically). RuleFilters and structural filter classes return pandas DataFrames. Lilly demerits require optional native binaries (mamba install lilly-medchem-rules).

When to Use This Skill

This skill should be used when:

  • Applying drug-likeness rules (Lipinski, Veber, CNS, lead-like) to compound libraries
  • Filtering molecules by structural alerts, PAINS, or NIBR screening-deck rules
  • Prioritizing compounds for hit-to-lead or lead optimization
  • Calculating complexity metrics against ZINC-derived thresholds
  • Detecting functional groups or named substructure catalogs
  • Building multi-criteria filters with the medchem query language

Installation

uv pip install medchem datamol

Optional — Eli Lilly demerit filter (requires conda-forge native binaries):

mamba install -c conda-forge lilly-medchem-rules

Core Capabilities

1. Medicinal Chemistry Rules

Apply established drug-likeness rules via medchem.rules.

List available rules:

import medchem as mc

mc.rules.RuleFilters.list_available_rules_names()
# ['rule_of_five', 'rule_of_five_beyond', 'rule_of_four', 'rule_of_three', ...]

Single rule on one molecule:

import datamol as dm
import medchem as mc

smiles = "CC(=O)OC1=CC=CC=C1C(=O)O"  # aspirin
mc.rules.basic_rules.rule_of_five(smiles)   # True
mc.rules.basic_rules.rule_of_cns(smiles)    # True
mc.rules.basic_rules.rule_of_veber(smiles)  # True

Multiple rules with RuleFilters (returns a DataFrame):

import datamol as dm
import medchem as mc

mols = [dm.to_mol(s) for s in smiles_list]

rfilter = mc.rules.RuleFilters(
    rule_list=["rule_of_five", "rule_of_oprea", "rule_of_cns", "rule_of_leadlike_soft"]
)
df = rfilter(mols=mols, n_jobs=-1, progress=True, keep_props=False)

# Columns: mol, pass_all, pass_any, rule_of_five, rule_of_oprea, ...
passing = df[df["pass_all"]]

Use keep_props=True to include computed descriptors (mw, clogp, tpsa, etc.) in the result.

2. Structural Alert Filters

Detect problematic patterns with medchem.structural. Both classes return DataFrames with pass_filter, status, and reasons columns.

Common alerts (ChEMBL-derived rule sets):

import medchem as mc

alert_filter = mc.structural.CommonAlertsFilters()
df = alert_filter(mols=mol_list, n_jobs=-1, progress=True)
# df columns: mol, pass_filter, status, reasons

clean = df[df["pass_filter"]]

NIBR filters (Novartis screening-deck curation):

nibr_filter = mc.structural.NIBRFilters()
df = nibr_filter(mols=mol_list, n_jobs=-1, progress=True)
# df columns: mol, pass_filter, status, severity, reasons, n_covalent_motif, special_mol

Compounds with severity >= 10 are excluded by default (see NIBR paper).

3. Named Catalog Filters (PAINS, Brenk, etc.)

Use medchem.catalogs.NamedCatalogs for RDKit FilterCatalog instances, or the functional API:

import medchem as mc

# List available named catalogs
mc.catalogs.list_named_catalogs()
# ['tox', 'pains', 'pains_a', 'brenk', 'nibr', 'zinc', ...]

# Functional API — True means molecule passes (no alert match)
passes = mc.functional.alert_filter(mols=mol_list, alerts=["pains"], n_jobs=-1)

# Or via catalog objects
passes = mc.functional.catalog_filter(
    mols=mol_list,
    catalogs=[mc.catalogs.NamedCatalogs.pains()],
    n_jobs=-1,
)

4. Functional API

medchem.functional provides one-call wrappers that return boolean masks (True = passes):

import medchem as mc

mc.functional.rules_filter(mols=mol_list, rules=["rule_of_five", "rule_of_cns"], n_jobs=-1)
mc.functional.nibr_filter(mols=mol_list, max_severity=10, n_jobs=-1)
mc.functional.alert_filter(mols=mol_list, alerts=["pains", "brenk"], n_jobs=-1)
mc.functional.complexity_filter(mols=mol_list, complexity_metric="bertz", limit="99", n_jobs=-1)

Other helpers: catalog_filter, chemical_group_filter, lilly_demerit_filter (requires optional binaries), macrocycle_filter, bredt_filter, protecting_groups_filter, and more.

5. Chemical Groups

Detect functional groups and curated pattern collections via medchem.groups:

import medchem as mc

# Browse available group collections
mc.groups.list_default_chemical_groups()
# ['privileged_scaffolds', 'common_warhead_covalent_inhibitors', 'rings_in_drugs', ...]

group = mc.groups.ChemicalGroup(groups=["privileged_scaffolds"])
group.has_match(mol)                          # bool
group.get_matches(mol)                        # dict of group → atom indices
group.filter(mols)                            # molecules matching the group

# Returns molecules that do NOT match the group
mc.functional.chemical_group_filter(mols=mol_list, chemical_group=group, n_jobs=-1)

Custom groups can be loaded from a file via groups_db (CSV with smiles/smarts, name, group columns).

6. Molecular Complexity

Compare complexity metrics to precomputed ZINC-15 percentile thresholds:

import medchem as mc

# Single molecule
cf = mc.complexity.ComplexityFilter(limit="99", complexity_metric="bertz")
cf(mol)  # True if below 99th-percentile threshold

# Batch via functional API
mc.functional.complexity_filter(
    mols=mol_list,
    complexity_metric="bertz",  # also: sas, qed, whitlock, barone, smcm, twc
    limit="99",
    n_jobs=-1,
)

# Direct metric functions
mc.complexity.WhitlockCT(mol)
mc.complexity.BaroneCT(mol)

7. Scaffold Constraints

medchem.constraints.Constraints matches a core scaffold and applies per-atom constraint functions — not simple MW/LogP ranges. For property bounds, use RuleFilters, descriptors via mc.rules.list_descriptors(), or the query language.

import datamol as dm
import medchem as mc

core = dm.to_mol("c1ccccc1")
constraints = mc.constraints.Constraints(
    core=core,
    constraint_fns={"query": lambda mol, atom_idx, query: ...},
)
constraints(mol)

8. Medchem Query Language

Build multi-criteria filters with medchem.query.QueryFilter:

import medchem as mc

# Rule + alert combination
qf = mc.query.QueryFilter('MATCHRULE("rule_of_five") AND NOT HASALERT("pains")')
mask = qf(mols=mol_list, n_jobs=-1)  # list[bool]

# CNS-like with property bounds
qf = mc.query.QueryFilter('MATCHRULE("rule_of_cns") AND HASPROP("tpsa", <=, 90)')
mask = qf(mols=mol_list, n_jobs=-1)

Query syntax:

  • MATCHRULE("rule_of_five") — apply a named rule
  • HASALERT("pains") — match a named catalog (pains, brenk, nibr, tox, …)
  • HASPROP("mw", <, 500) — compare a descriptor (unquoted comparator)
  • HASGROUP("privileged_scaffolds") — match a chemical group
  • HASSUBSTRUCTURE("c1ccccc1") — substructure match
  • Operators: AND, OR, NOT

List available descriptors: mc.rules.list_descriptors()

Workflow Patterns

Pattern 1: Initial Triage of a Compound Library

import datamol as dm
import medchem as mc
import pandas as pd

df = pd.read_csv("compounds.csv")
mols = [dm.to_mol(s) for s in df["smiles"]]

# Drug-likeness rules
rules_df = mc.rules.RuleFilters(rule_list=["rule_of_five", "rule_of_veber"])(mols=mols, n_jobs=-1)

# PAINS + common alerts via query
qf = mc.query.QueryFilter('MATCHRULE("rule_of_five") AND NOT HASALERT("pains")')
pass_mask = qf(mols=mols, n_jobs=-1)

df["passes_rules"] = rules_df["pass_all"].values
df["drug_like"] = pass_mask
filtered_df = df[df["drug_like"]]
filtered_df.to_csv("filtered_compounds.csv", index=False)

Pattern 2: Lead Optimization Filtering

import medchem as mc

rules_df = mc.rules.RuleFilters(rule_list=["rule_of_leadlike_soft"])(mols=candidates, n_jobs=-1)
nibr_df = mc.structural.NIBRFilters()(mols=candidates, n_jobs=-1)
complex_mask = mc.functional.complexity_filter(
    mols=candidates, complexity_metric="bertz", limit="95", n_jobs=-1
)

passes = (
    rules_df["pass_all"]
    & nibr_df["pass_filter"]
    & complex_mask
)

Pattern 3: Detect Functional Groups

import medchem as mc

group = mc.groups.ChemicalGroup(groups=["common_warhead_covalent_inhibitors"])
matches = [group.has_match(mol) for mol in mol_list]
warhead_mols = [mol for mol, m in zip(mol_list, matches) if m]

Best Practices

  1. Context matters — marketed drugs often violate Ro5; prodrugs and natural products are common exceptions.
  2. Combine filters — rules, alert catalogs, and complexity thresholds work best together.
  3. Use parallelization — pass n_jobs=-1 for libraries >1000 molecules.
  4. Check return typesRuleFilters and structural classes return DataFrames; functional helpers return boolean arrays.
  5. Lilly demerits are optional — install lilly-medchem-rules separately; default max demerits is 160 in the functional API.
  6. Document decisions — retain status, reasons, and severity columns for audit trails.

Resources

references/api_guide.md

Module-by-module API reference with signatures, return types, and patterns.

references/rules_catalog.md

Catalog of available rules, alert sets, complexity metrics, and filter selection guidelines.

scripts/filter_molecules.py

Batch filtering script for CSV/TSV/SDF/SMILES inputs with configurable rules, alerts, and complexity thresholds.

uv run python scripts/filter_molecules.py input.csv \
  --rules rule_of_five,rule_of_cns --pains --nibr --output filtered.csv

Documentation

Info
Category Data Science
Name medchem
Version v20260601
Size 14.4KB
Updated At 2026-06-03
Language