AI yields sub-µM CDK16 hits & AR PROTACs active in CRPC mice

Today's Overview

  • Docking-Augmented ML Yields First Sub-µM CDK16 Inhibitors Docked-pose augmentation converted limited CDK16 bio data into thousands of regression samples, enabling the first ML model to deliver sub-10 µM inhibitors.
  • Hybrid quantum–machine learning workflows push virtual-screening accuracy while hardware limits remain No experimental potency or selectivity metrics are reported; validation is restricted to 300–500 ns MD simulations.
  • AI-guided PROTAC design yields potent AR degraders active in CRPC xenografts AI-generated linker proposals within a MD-optimized AR/CRBN ternary complex produced degraders that eliminate both wild-type and five clinically relevant CRPC AR mutants.

Also Worth Noting

04
DUW-MGCA: QM/MD coattention for PLIDocking & Binding

An SE(3)-equivariant graph network that uncertainty-weights hybrid QM/MD data predicts binding with RMSE 0.979 kcal mol⁻¹ and R=0.931 on HiQBind-MISATO while running ~1 min per complex on one GPU. link (Chem)

05
AlphaFold3-guided discovery of B7-H3/DLL3 macrocyclic RDC ligandsScreening & Target Discovery

AlphaFold3 structural triage of a 1.5×10¹¹-member phage library yielded cyclic peptides with KD 8.2×10⁻⁷ M and >3-fold selectivity for B7-H3 or DLL3, confirmed by SPR and cell binding. link

06
Data leakage inflates drug response accuracyOmics & Biomarkers

A systematic audit of 265 drugs and 1,462 cell lines showed that pre-CV feature screening inflates MSE by 16.6 % and that 72 % of 32 published methods (2017-2024) contain this leakage, indicating many claimed improvements are evaluation artifacts. link

07
Benchmarking pKa Prediction on 90k Public DataGeneral AIDD

Benchmarking seven pKa prediction tools on a curated 90,000-entry public set shows open-source ML models rival commercial accuracy for aqueous proton dissociation constants. link (Chem)

08
Computer-guided natural inhibitors for UC necroptosisMolecular Generation

Integrative bioinformatics identified hub necroptosis genes in ulcerative colitis and in-silico screening of natural product libraries yielded candidate inhibitors prioritised by docking and ADMET scores. link

09
STAT3 Shallow-Site Binder Discovery PipelineMolecular Dynamics

A computational workflow combining MD, pharmacophore mapping, and ML proposed novel STAT3 small-molecule binders for previously undruggable shallow sites. link

10
Dynamic PDX/CCLE model picker via ensemble ML + NL queryOmics & Biomarkers

Agentic CertisAI Assistant embeds an ensemble model trained on CCLE/PDX mono- and combo-drug response data to let users upload SMILES/FASTQ and receive real-time, natural-language-ranked tumor model predictions for pre-clinical oncology studies. link

11
AI-guided NK regulon panel predicts CML relapse after TKI stopOmics & Biomarkers

Re-analysis of scRNA-seq from 6 CML patients with an AI gene-prioritization pipeline distinguished treatment-free remission from early/late relapse by NK-cell RUNX3/EOMES versus FOSL2/MAF regulon activity and generated a compact transcriptional biomarker panel linked to IFN-γ and metabolic circuits. link

12
Virtual Lab Simulated Cells de-risk oncology targetsOmics & Biomarkers

AI-guided mechanistic cell simulations trained on CCLE, DepMap, GDSC2 and LINCS reproduce DepMap dependencies with r=0.90 globally and achieve 70 % prospective validation hit rate while halving in-vivo validation timelines for in-silico-identified targets. link

13
AI-designed miniproteins for mutant p53-R175H peptide–HLA-A*02:01 complexMolecular Generation

Integrated AI platforms de-novo generated <150-aa miniproteins that bind the p53-R175H peptide-MHC-I complex and are being validated as CAR-T/NK engagers to kill tumor cells expressing this mutation. link

14
Label-Free HT-CNN Predicts RCD PathwaysClinical & Medical AI

An ImageNet-pretrained CNN applied to 3D holotomography MIPs classifies five HeLa RCD states at 99.3% accuracy and detects necroptosis 2–4 h before Annexin V/PI, with 3D models outperforming 2D (76–88% vs 50–55%) and cross-line portability restored by small-data fine-tuning. link

15
MetaGIN: lightweight message-passing for molecular property predictionADMET & Properties

MetaGIN embeds molecules with a parameter-efficient graph-isomorphism network and meta-learned initial features, yielding competitive or state-of-the-art results on six molecular property benchmarks while using ≤15% of the parameters of larger GNNs. link

Today's Observation

Today’s trio shows how far AIDD has moved beyond vanilla docking or ML: each paper layers a physics-based step (docked poses, quantum-level energies, or MD-refined ternary complexes) onto a machine-learning layer to squeeze value from sparse data. CDK16 finally gets its first sub-µM chemical matter because pose-augmented gradient-boosting turned 56 measured %inhib values into 3 000 regression points, yielding two validated enzymatic hits at 3.5 µM and 5.8 µM. Likewise, PROTAC design used an MD-optimized AR/CRBN complex to train the linker generator, producing orally active degraders that collapse both wild-type and five clinically relevant AR mutants in CRPC xenografts while shrinking tumors and serum PSA without overt toxicity.

The same theme—physics-aware feature engineering—also exposes current ceilings. CDK16 hits are still only biochemical IC50s with no selectivity, cell data, or structural confirmation, and the quantum–ML hybrid reaches merely 300–500 ns MD checks with no experimental potency, illustrating that hardware errors and encoding bottlenecks keep it in the virtual-screening realm. For practitioners, the clear message is to treat physics-augmented ML as a data multiplier, not a magic bullet: pair it with immediate enzymatic or cellular triage, plan follow-up SAR cycles early, and budget for off-target panels and rodent PK before claiming target-ready leads.

The above is personal commentary for reference only. Refer to the original papers for authoritative content.