Applications and challenges in designing VHH-based bispecific antibodies: leveraging machine learning solutions
The development of bispecific antibodies that bind at least two different targets relies on
bringing together multiple binding domains with different binding properties and biophysical …
bringing together multiple binding domains with different binding properties and biophysical …
An integrated technology for quantitative wide mutational scanning of human antibody Fab libraries
BM Petersen, MB Kirby, KM Chrispens, OM Irvin… - Nature …, 2024 - nature.com
Antibodies are engineerable quantities in medicine. Learning antibody molecular
recognition would enable the in silico design of high affinity binders against nearly any …
recognition would enable the in silico design of high affinity binders against nearly any …
Antibody domainbed: Out-of-distribution generalization in therapeutic protein design
Machine learning (ML) has demonstrated significant promise in accelerating drug design.
Active ML-guided optimization of therapeutic molecules typically relies on a surrogate model …
Active ML-guided optimization of therapeutic molecules typically relies on a surrogate model …
[HTML][HTML] Biophysics-based protein language models for protein engineering
Protein language models trained on evolutionary data have emerged as powerful tools for
predictive problems involving protein sequence, structure, and function. However, these …
predictive problems involving protein sequence, structure, and function. However, these …
Toward enhancement of antibody thermostability and affinity by computational design in the absence of antigen
M Hutchinson, JA Ruffolo, N Haskins, M Iannotti… - mAbs, 2024 - Taylor & Francis
Over the past two decades, therapeutic antibodies have emerged as a rapidly expanding
domain within the field of biologics. In silico tools that can streamline the process of antibody …
domain within the field of biologics. In silico tools that can streamline the process of antibody …
[HTML][HTML] Contextual protein and antibody encodings from equivariant graph transformers
The optimal residue identity at each position in a protein is determined by its structural,
evolutionary, and functional context. We seek to learn the representation space of the …
evolutionary, and functional context. We seek to learn the representation space of the …
T-cell receptor structures and predictive models reveal comparable alpha and beta chain structural diversity despite differing genetic complexity
T-cell receptor (TCR) structures are currently under-utilised in early-stage drug discovery
and repertoire-scale informatics. Here, we leverage a large dataset of solved TCR structures …
and repertoire-scale informatics. Here, we leverage a large dataset of solved TCR structures …
FLAb: Benchmarking deep learning methods for antibody fitness prediction
The successful application of machine learning in therapeutic antibody design relies heavily
on the ability of models to accurately represent the sequence-structure-function landscape …
on the ability of models to accurately represent the sequence-structure-function landscape …
Baselining the Buzz. Trastuzumab-HER2 Affinity, and Beyond!
There is currently considerable interest in the field of de novo antibody design, and deep
learning techniques are now regularly applied to optimise antibody properties such as …
learning techniques are now regularly applied to optimise antibody properties such as …
Training data composition determines machine learning generalization and biological rule discovery
Supervised machine learning models rely on training datasets with positive (target class)
and negative examples. Therefore, the composition of the training dataset has a direct …
and negative examples. Therefore, the composition of the training dataset has a direct …