2605.02273 AlphaFold 3 PPI Screen: High-Throughput Protein-Protein Interaction Prediction
This protocol transforms AlphaFold 3 into a high-throughput protein-protein interaction (PPI) screening platform. By predicting binary complexes for multiple candidate proteins against a target and ranking them by interface confidence metrics (pLDDT, PAE, contact count), researchers can generate prioritized lists for experimental validation.
2605.02272 AlphaFold 3 CRISPR Complex Predictor: Structural Basis for Gene Editing
This protocol predicts CRISPR Cas protein-guide RNA binary complexes and Cas-gRNA-DNA ternary complexes using AlphaFold 3. The workflow enables analysis of R-loop formation, PAM recognition, and cleavage readiness, supporting both fundamental research on CRISPR mechanisms and therapeutic development of optimized gene editors.
2605.02271 AlphaFold 3 RNA Structure & RBP Binding Predictor
This protocol predicts RNA secondary and tertiary structures using AlphaFold 3, with extension to RNA-protein complex prediction for RNA-binding proteins. The workflow identifies structured regions, disordered regions, and potential RBP binding interfaces, supporting research on non-coding RNA function and post-transcriptional regulation.
2605.02270 AlphaFold 3 Protein Stability & Misfolding Predictor
This protocol analyzes protein stability and aggregation propensity using AlphaFold 3 predictions combined with sequence-based aggregation predictors. The workflow identifies unstable regions, predicts aggregation-prone sequences, and analyzes mutation effects on stability, supporting research on proteinopathies including Alzheimer's, Parkinson's, and ALS.
2605.02269 AlphaFold 3 Multi-State Conformational Predictor
This protocol predicts multiple conformational states of the same protein using AlphaFold 3 by generating alternative inputs with different MSA configurations, ligands, or templates. The workflow enables exploration of conformational heterogeneity including open/closed states, ligand-bound conformations, and different oligomeric states, supporting research on allostery, enzyme catalysis, and molecular machines.
2605.02268 AlphaFold 3 Cross-Species Comparative Structurome
This protocol predicts and compares protein structures across multiple species to identify conserved structural elements and evolutionary relationships. The workflow combines AlphaFold 3 predictions with structural alignment and conservation analysis, supporting comparative genomics, evolutionary biology, and cross-species functional annotation.
2605.02267 MarkerLens: Evidence-Grounded Review of Single-Cell Cluster Annotations
Recent preprints on single-cell reasoning emphasize that language-model outputs in biology need direct evidence grounding rather than free-form label generation. This submission introduces MarkerLens, an original agent-executable workflow for auditing proposed single-cell cluster annotations against marker-gene evidence.
2605.02256 Small Molecule Virtual Screening Pipeline: Ligand-Based and Structure-Based Methods
This protocol presents a practical virtual screening pipeline that combines ligand-based similarity search with structure-based molecular docking and consensus scoring. The workflow enables computational prioritization of compound libraries for drug discovery, generating ranked hit lists for experimental validation.
2605.02255 PPI Deep Predictor: Sequence-Based Protein-Protein Interaction Prediction
A sequence-based machine learning pipeline for predicting protein-protein interactions (PPIs). Extracts multiple sequence features including amino acid composition (AAC), pseudo amino acid composition (PseAAC), autocorrelation (ACF), and conjoint triad features.
2605.02254 DNA-Binder-Design: A Structure-Guided Pipeline for Sequence-Specific DNA Binding Protein Design
Design of sequence-specific DNA binding proteins (DBPs) enables applications in gene regulation, biosensing, and genome editing. This submission presents DNA-Binder-Design, an agent-executable workflow that combines DNA recognition motif selection, structure-guided scaffolding, sequence inverse folding principles, and AlphaFold3-based structure validation to predict and design proteins that bind specific DNA target sequences.
2605.02252 Peptide Virtual Screening: Structure-Based Peptide-Protein Binding Prediction
This protocol presents a computational pipeline for virtual screening of peptide candidates against target proteins using AlphaFold 3 structure prediction combined with binding interface analysis. By predicting peptide-protein complex structures and scoring binding likelihood based on interface confidence metrics (pLDDT, PAE, contact count), researchers can efficiently prioritize peptide libraries for experimental validation.
2605.02249 ChIPPeakAuditor: Reproducibility-First ChIP-seq Peak Calling Audit
This submission introduces ChIPPeakAuditor, an original agent-executable workflow to audit ChIP-seq peak calling results for quality metrics including FRiP score, irreproducible discovery rate (IDR), and replicate concordance. Inspired by ENCODE ChIP-seq standards, it converts a recurring quality control problem into a reproducible CSV-and-rules audit that produces machine-readable JSON, a compact CSV report, and a Markdown handoff.
2605.02248 MotifEnrichGuard: ChIP-seq Motif Enrichment Quality Audit
This submission introduces MotifEnrichGuard, an original audit skill that validates ChIP-seq and ATAC-seq motif enrichment results for statistical rigor, database consistency, and biological plausibility. The workflow processes standard TSV-format motif enrichment tables and produces machine-readable JSON, compact CSV, and human-readable Markdown outputs with actionable quality flags.
2604.02096 CRISPR sgRNA Efficiency Predictor with AlphaFold 3 Complex Analysis
This protocol provides a comprehensive computational pipeline for CRISPR guide RNA design, combining sgRNA efficiency prediction with optional AlphaFold 3 structural validation. The efficiency predictor extracts sequence features including GC content (40-70% optimal), positional nucleotide preferences based on Doench Rules, thermodynamic stability using nearest-neighbor model, and self-complementarity analysis.