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Radar nghiên cứu AI y sinh

315 bài báo từ ICML 2026, lọc theo chủ đề. Mỗi bài link thẳng tới bản gốc (OpenReview) và mã nguồn. Ghi chú "vì sao đáng đọc" là của Phở; tóm tắt và nội dung thuộc về tác giả.

Nguồn: BioTender-max/icml2026-ai-bio (CC0-1.0) · cập nhật 10 tháng 7, 2026 · về nguồn dữ liệu

★ Spotlight Sinh học cấu trúc

Autoregressive Boltzmann Generators

Danyal Rehman, Charlie B. Tan, Yoshua Bengio, Joey Bose +1

Efficient sampling of molecular systems at thermodynamic equilibrium is a hallmark challenge in statistical physics. This challenge has driven the development of Boltzmann…

★ Spotlight Protein

Chamaileon: Cross-Context Binder Design with Contextualized Modeling and Mixed Sampling

Hengyuan Cao, Shizhuo Cheng, Mingxuan Liu, Weicheng Huang +4

Vì sao đáng đọc — Đa số mô hình thiết kế binder mới giả định một đích, một trạng thái. Chamaileon nới ràng buộc đó sang đa-đích và đa-trạng-thái, gần với cách protein thật hoạt động hơn. Đáng đọc nếu bạn theo dõi hướng thiết kế protein có chức năng cụ thể.

★ Spotlight Lâm sàng & Y tế

ClinTutor-R1: Advancing Scalable and Robust One-to-Many Alignment in Clinical Socratic Education

Zhitao He, Haolin Yang, Zeyu Qin, Yi R. Fung

Vì sao đáng đọc — LLM dạy một-kèm-một thì tốt, nhưng buổi đi buồng dạy nhiều học viên cùng lúc lại là bài toán khác. Cách tiếp cận one-to-many này gần với thực tế đào tạo lâm sàng, và là góc nhìn hữu ích cho ai xây trợ lý giáo dục y khoa.

★ Spotlight Hệ gen

dnaHNet: A Scalable and Hierarchical Foundation Model for Genomic Sequence Learning

Arnav Shah, Junzhe Li, Parsa Idehpour, Adibvafa Fallahpour +4

Vì sao đáng đọc — Mô hình nền cho DNA vướng đánh đổi: token dạng subword cắt vụn motif sinh học, còn mức nucleotide thì quá tốn tính toán. dnaHNet đề xuất kiến trúc phân cấp để dung hoà. Đáng theo dõi nếu bạn quan tâm tới foundation model hệ gen.

★ Spotlight Phân tử & Thuốc

From Feasible to Practical: Pareto-Optimal Synthesis Planning

Friedrich Hastedt, Dongda Zhang, Antonio Del rio chanona

Current computer-aided synthesis planning (CASP) methods often treat retrosynthesis as solved once a single feasible route is identified, focusing primarily on convergence or…

★ Spotlight Protein

Protein Fold Classification at Scale: Benchmarking and Pretraining

Dexiong Chen, Andrei Manolache, Mathias Niepert, Karsten Borgwardt

Classifying protein topology is essential for deciphering biological function, but progress is held back by the lack of large-scale benchmarks that avoid duplicates and by models…

★ Spotlight Lâm sàng & Y tế

SleepLM: Natural-Language Intelligence for Human Sleep

Zongzhe Xu, Zitao Shuai, Eideen Mozaffari, Ravi Shankar Aysola +2

We present SleepLM, a family of sleep-language foundation models that enable human sleep alignment, interpretation, and interaction with natural language. Despite the critical…

★ Spotlight Protein

TD3B: Transition-Directed Discrete Diffusion for Allosteric Binder Generation

Hanqun Cao, Aastha Pal, Sophia Tang, Yinuo Zhang +3

Vì sao đáng đọc — Chức năng protein thường do ligand lái hướng chuyển trạng thái (chủ vận/đối vận), không chỉ khoá một cấu hình. Bài này nhắm thẳng vào nhóm đích GPCR có liên quan lâm sàng, nơi hiệu quả điều trị phụ thuộc đúng hướng tác động. Liên quan trực tiếp tới thiết kế thuốc.

★ Spotlight Protein Phân tử & Thuốc

Towards Sub-Second Molecular Docking as a Structural Primitive: A Quantized Consistency Diffusion Framework

Kexin Zhang, Weichen Qin, Yue Teng, Jiale Yu +4

Vì sao đáng đọc — Docking phân tử dưới một giây mở đường cho vòng lặp nghiên cứu do agent điều phối chạy thời gian thực. Đây là mảnh hạ tầng đúng hướng chúng tôi quan tâm: mô hình khoa học vừa chính xác vừa gọi được nhanh trong luồng công cụ.

★ Spotlight Hệ gen

Training Diffusion Language Models for Black-Box Optimization

Zipeng Sun, Can Chen, Ye Yuan, Haolun Wu +3

We study offline black-box optimization (BBO), aiming to discover improved designs from an offline dataset of designs and labels, a problem common in robotics, DNA, and materials…

Lâm sàng & Y tế

A Geometric Lens on Physics-Aligned Data Compression

Aleix Segui Ugalde, Wesley Armour

In AI for Science, physics-informed losses are increasingly used to train learned compressors for scientific data, but their rate--distortion implications remain poorly…

Thần kinh & Não bộ

A hitchhiker's guide to Poisson gradient estimation

Michael Ibrahim, Hanqi Zhao, Eli Zachary Sennesh, Zhi Li +4

Poisson-distributed latent variable models are widely used in computational neuroscience, but differentiating through discrete stochastic samples remains challenging. Two…

Lâm sàng & Y tế

Agentic Framework for Epidemiological Modeling

Rituparna Datta, Zihan Guan, Baltazar Espinoza, Yiqi Su +4

Epidemic modeling is essential for public health planning, yet traditional approaches rely on fixed model classes that require manual redesign as pathogens, policies, and scenario…

Lâm sàng & Y tế

BioAgent Bench: An AI Agent Evaluation Suite for Bioinformatics

Dionizije Fa, Marko Čuljak, Bruno Pandža, Mateo Čupić

We introduce BioAgent Bench, an evaluation suite designed for measuring the performance and robustness of AI agents in common bioinformatics tasks. The suite consists of manually…

Protein

Co-Generative De Novo Functional Protein Design

Xinrui Chen, Yizhen Luo, Siqi Fan, Zaiqing Nie

*De novo* functional protein design aims to generate protein sequences that realize specified biochemical functions without relying on evolutionary templates, enabling broad…

Sinh học cấu trúc

Coarse-Grained Boltzmann Generators

Weilong Chen, Bojun Zhao, Jan Eckwert, Julija Zavadlav

Sampling equilibrium molecular configurations from the Boltzmann distribution is a longstanding challenge. Boltzmann Generators (BGs) address this by combining exact-likelihood…

Thần kinh & Não bộ

Credit Assignment via Neural Manifold Noise Correlation

Byungwoo Kang, Maceo Richards, Bernardo L. Sabatini

Credit assignment, the process of determining how changes in individual neurons and synapses influence a network’s output, is central to learning in brains and machines. Noise…

Lâm sàng & Y tế Chẩn đoán hình ảnh

Deep Learning for BioImaging: What Are We Really Learning?

Ivan Svatko, Maxime Sanchez, Ihab Bendidi, Gilles Cottrell +1

Representation learning has driven major advances in natural image analysis by enabling models to acquire high-level semantic features. In microscopy imaging, however, it remains…

Phân tử & Thuốc

Derivative Informed Learning of Exchange-Correlation Functionals

Eike Eberhard, Luca Thiede, Abdulrahman Aldossary, Andreas Burger +4

Machine-learned (ML) XC functionals aim to replace human-designed density functional approximations by learning directly from reference data, but they still do not consistently…

Hệ gen

DNACHUNKER: Learnable Tokenization for DNA Language Models

Taewon Kim, Jihwan Shin, Hyomin Kim, Youngmok Jung +4

DNA language models are increasingly used to represent genomic sequence, yet their effectiveness depends critically on how raw nucleotides are converted into model inputs. Unlike…

Thần kinh & Não bộ

Dynamic Compression Flows for Neuroscience Data

Ganchao Wei, Daniela F De Albuquerque, Miles Martinez, Shiyang Pan +1

While neuroscience experiments have repeatedly demonstrated the involvement of large populations of neurons in even simple behaviors, these studies have just as often reported…

Protein

Flexible Kernels for Protein Property Prediction

Martin Jankowiak, Yerdos Ordabayev, Rudraksh Tuwani, Henry Neil Ward +3

Despite its importance to applications in protein design, predicting protein properties like binding affinity and thermostability from sparse experimental data remains a…

Hệ gen

GENEB: Why Genomic Models Are Hard to Compare

Daria Ledneva, Mikhail Nuridinov, Denis Kuznetsov

Progress in genomic foundation models is difficult to assess due to fragmented benchmarks, incompatible evaluation protocols, and task-specific reporting. As a result, claims of…

Lâm sàng & Y tế

HEARTS: Benchmarking LLM Reasoning on Health Time Series

Sirui Li, Shuhan Xiao, Mihir Joshi, Ahmed Metwally +3

The rise of large language models (LLMs) has shifted time series analysis from narrow analytics to general-purpose reasoning. Yet, existing benchmarks cover only a small set of…

Thần kinh & Não bộ

Learning Dynamic Stability Landscapes in Synchronization Networks

Christian Nauck, Junyou Zhu, Michael Lindner, Frank Hellmann

The robustness of synchronization is typically characterized by scalar, per-node stability indices whose dependence on topology is studied via network science or graph neural…

Thần kinh & Não bộ

Let EEG Models Learn EEG

Yifan Wang, Yijia Ma, Wen Li, Chenyu You

High-fidelity EEG generation is critical for alleviating data scarcity and addressing privacy constraints in large-scale neural modeling. Despite recent progress, most existing…

Protein

MacroGuide: Topological Guidance for Macrocycle Generation

Alicja Maksymiuk, Alexandre Duplessis, Michael M. Bronstein, Alexander Tong +2

Macrocycles are ring-shaped molecules that offer a promising alternative to small-molecule drugs due to their enhanced selectivity and binding affinity against difficult targets.…

Thần kinh & Não bộ

Omni-fMRI: A Universal Atlas-Free fMRI Foundation Model

Mo Wang, Wenhao Ye, Junfeng Xia, Junxiang Zhang +4

Self-supervised fMRI foundation models have shown promising transfer performance, yet most rely on predefined region-level parcellations that discard fine-grained voxel…

Chẩn đoán hình ảnh

On Revisiting Entropy for Identifying Mislabeled Images

Chunlei Li, Zixuan Zheng, Yilei Shi, Guanglu Dong +4

Mislabeled samples in training datasets severely degrade the performance of deep networks, as overparameterized models tend to memorize erroneous labels. We address this challenge…

Thần kinh & Não bộ

On the Spectral Unreachability of Brain Graph Learning

Jiaming Zhuo, Shuai Zhai, Ziyi Ma, Kun Fu +4

Brain network classification is pivotal for diagnosing neurological disorders, yet identifying interpretable functional biomarkers fundamentally relies on precise parcellation.…

Lâm sàng & Y tế

OSF: On Pre-training and Scaling of Sleep Foundation Models

Zitao Shuai, Zongzhe Xu, David Yang, Wei Wang +1

Polysomnography (PSG) provides the gold standard for sleep assessment but suffers from substantial heterogeneity across recording devices and cohorts. There have been growing…

Lâm sàng & Y tế

Process Reward Agents for Steering Knowledge-Intensive Reasoning

Jiwoong Sohn, Tomasz Sternal, Kenneth Styppa, Torsten Hoefler +1

Reasoning in knowledge-intensive domains remains challenging as intermediate steps are often not locally verifiable: unlike math or code, evaluating step correctness may require…

Protein

Protein Circuit Tracing via Cross-layer Transcoders

Darin Tsui, Kunal Talreja, Daniel Saeedi, Amirali Aghazadeh

Protein language models (pLMs) have emerged as powerful predictors of protein structure and function. However, the computational circuits underlying their predictions remain…

Chẩn đoán hình ảnh Thần kinh & Não bộ

Scaling Vision Transformers for Functional MRI with Flat Maps

Connor Lane, Mihir Tripathy, Leema Krishna Murali, Ratna Sagari Grandhi +4

We study the problem of training self-supervised foundation models for functional MRI. Our main contributions are: (1) we introduce a new model family (CortexMAE) trained using…

Đơn bào

scCBGM: Single-Cell Editing via Concept Bottlenecks

Alma Andersson, Aya Abdelsalam Ismail, Edward De Brouwer, Doron Haviv +4

Understanding cellular phenotypes and how they respond to perturbations is critical for disease biology and therapeutic design. Single-cell RNA sequencing enables characterization…

Lâm sàng & Y tế

Small Agent Group is the Future of Digital Health

Yuqiao Meng, Luoxi Tang, Dazheng Zhang, Rafael Brens +4

The rapid adoption of large language models (LLMs) in digital health has been driven by a "scaling-first" philosophy, i.e., the assumption that clinical intelligence increases…

Phân tử & Thuốc Sinh học cấu trúc

Speculative Sampling For Faster Molecular Dynamics

Arthur Kosmala, Stephan Günnemann, Meng Gao, Brandon M. Wood

Molecular dynamics (MD) is a key tool for simulating the dynamical behavior of atomic systems. However, MD is inherently serial, which makes it difficult to increase single-system…

Lâm sàng & Y tế Thần kinh & Não bộ

Structured Multi-modal Graph Disentanglement for Psychiatric Diagnosis

Hongyu Shi, Kaizhong Zheng, Wensheng Zhai, Shuai Jiang +2

Multi-modal neuroimaging-based psychiatric diagnosis must integrate cross-modal agreement with modality-specific complementarity, yet in real multi-site cohorts these signals are…

Thần kinh & Não bộ

Torus Graphs for Large Scale Neural Phase Analysis

Jack Goffinet, Casey Hanks, David Carlson

Oscillatory neural signals such as electroencephalography (EEG) and local field potentials (LFPs) show phase relationships that coordinate communication across brain regions.…

Protein

Towards A Generative Protein Evolution Machine with DPLM-Evo

Xinyou Wang, Liang Hong, Jiasheng Ye, Zaixiang Zheng +2

Proteins are shaped by gradual evolution under biophysical and functional constraints. Protein language models learn rich evolutionary constraints from large-scale sequences, and…

Thần kinh & Não bộ

Ubiquity of Emergent Hebbian Dynamics in Regularized Learning

David Aaron Koplow, Tomaso Poggio, Liu Ziyin

Hebbian and anti-Hebbian plasticity are widely observed in the brain and are classically modeled as mechanistic, local homosynaptic rules stabilized by homeostatic constraints.…