Kallyope
Deciphering the gut-brain axis through AI-driven drug discovery for transformative therapeutics.

The Industry Standard for Protein Comparative Modeling and Structural Bio-Refinement.
MODELLER is a specialized computational tool used for homology or comparative modeling of protein three-dimensional structures. By 2026, it has solidified its position as a critical post-processing and refinement engine for AI-generated protein folds from systems like AlphaFold3 and RoseTTAFold. Unlike pure neural network predictors, MODELLER utilizes a technique known as 'satisfaction of spatial restraints'—it takes an alignment between a target sequence and known template structures as input and outputs a 3D model containing all non-hydrogen atoms. Technically, its architecture is built around a complex objective function that minimizes violations of restraints derived from the alignment and basic stereochemical rules. This makes it indispensable for researchers needing to include ligands, handle multi-component assemblies, or refine specific loops that general AI models may struggle with. Its Python-based scripting interface allows for high-level automation, making it a staple in high-throughput virtual screening and synthetic biology pipelines. While academics can access the tool for free, commercial licenses are strictly regulated, reflecting its high value in pharmaceutical R&D.
Uses a conjugate gradient and simulated annealing method to minimize an objective function based on probability density functions.
Deciphering the gut-brain axis through AI-driven drug discovery for transformative therapeutics.
Accelerating drug discovery through an end-to-end generative AI pipeline for target identification, molecular design, and clinical trial prediction.
The industry-standard interactive visualization tool for integrated exploration of large-scale genomic datasets.
Unlocking the causal biology of disease through Gemini Digital Twins.
Verified feedback from the global deployment network.
Post queries, share implementation strategies, and help other users.
Discrete Optimized Protein Energy (DOPE) score for assessing the quality of atomic-level models based on a statistical potential.
Combines information from multiple structural templates to build a single consensus target model.
Automatic identification and refinement of flexible loop regions using ab initio methods within the framework.
Allows for the inclusion of HETATM records from templates into the target model.
Enforces non-crystallographic symmetry during the modeling of homomeric assemblies.
The core engine is accessible via a comprehensive Python API (Modeller module).
AlphaFold models often lack specific ligand coordinates or have local loop geometry issues.
Registry Updated:2/7/2026
Select model with lowest DOPE score
Lack of high-resolution structures for a specific target protein in the PDB.
Predicting how a mutation affects the active site volume.