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 shape similarity



Tong Wu

Neural Information Processing Systems

This table is the same to Table 1 in the paper. However, the performance of FADI is slightly less-than-satisfactory on higher shot and novel split2. Distribution Alignment (Section 3.2 in paper) is not the real distribution of novel classes. As mentioned in Section 4.4 (Paragraph: Superiority of Semantic Similarity over Visual Similarity), the visual representation is not reliable under data-scarce scenarios due to the existence of co-occurrence, thus we adopt semantic as similarity measurement, However, it can not capture some other cues that matter to the performance, e.g., shape similarity, which has been proved to be beneficial to the knowledge generalization [ Empirically, 'bird' is more similar to'aeroplane' from the We study the hyper-parameters, i.e., We found the optimality of hyper-parameters is related to the confusion level with models, hence we adopt'association + disentangling' We first investigate the importance of each component in Table 3. On the contrary, it also has a suppression of novel classes.


Generating 3D Binding Molecules Using Shape-Conditioned Diffusion Models with Guidance

Chen, Ziqi, Peng, Bo, Zhai, Tianhua, Adu-Ampratwum, Daniel, Ning, Xia

arXiv.org Artificial Intelligence

Drug development is a critical but notoriously resource- and time-consuming process. In this manuscript, we develop a novel generative artificial intelligence (genAI) method DiffSMol to facilitate drug development. DiffSmol generates 3D binding molecules based on the shapes of known ligands. DiffSMol encapsulates geometric details of ligand shapes within pre-trained, expressive shape embeddings and then generates new binding molecules through a diffusion model. DiffSMol further modifies the generated 3D structures iteratively via shape guidance to better resemble the ligand shapes. It also tailors the generated molecules toward optimal binding affinities under the guidance of protein pockets. Here, we show that DiffSMol outperforms the state-of-the-art methods on benchmark datasets. When generating binding molecules resembling ligand shapes, DiffSMol with shape guidance achieves a success rate 61.4%, substantially outperforming the best baseline (11.2%), meanwhile producing molecules with novel molecular graph structures. DiffSMol with pocket guidance also outperforms the best baseline in binding affinities by 13.2%, and even by 17.7% when combined with shape guidance. Case studies for two critical drug targets demonstrate very favorable physicochemical and pharmacokinetic properties of the generated molecules, thus, the potential of DiffSMol in developing promising drug candidates.


Shape-conditioned 3D Molecule Generation via Equivariant Diffusion Models

Chen, Ziqi, Peng, Bo, Parthasarathy, Srinivasan, Ning, Xia

arXiv.org Artificial Intelligence

Ligand-based drug design aims to identify novel drug candidates of similar shapes with known active molecules. In this paper, we formulated an in silico shape-conditioned molecule generation problem to generate 3D molecule structures conditioned on the shape of a given molecule. To address this problem, we developed a translation-and rotation-equivariant shape-guided generative model ShapeMol . ShapeMol consists of an equivariant shape encoder that maps molecular surface shapes into latent embeddings, and an equivariant diffusion model that generates 3D molecules based on these embeddings. Experimental results show that ShapeMol can generate novel, diverse, drug-like molecules that retain 3D molecular shapes similar to the given shape condition. These results demonstrate the potential of ShapeMol in designing drug candidates of desired 3D shapes binding to protein target pockets.


Finding the Most Transferable Tasks for Brain Image Segmentation

Li, Yicong, Tan, Yang, Yang, Jingyun, Li, Yang, Zhang, Xiao-Ping

arXiv.org Artificial Intelligence

Although many studies have successfully applied transfer learning to medical image segmentation, very few of them have investigated the selection strategy when multiple source tasks are available for transfer. In this paper, we propose a prior knowledge guided and transferability based framework to select the best source tasks among a collection of brain image segmentation tasks, to improve the transfer learning performance on the given target task. The framework consists of modality analysis, RoI (region of interest) analysis, and transferability estimation, such that the source task selection can be refined step by step. Specifically, we adapt the state-of-the-art analytical transferability estimation metrics to medical image segmentation tasks and further show that their performance can be significantly boosted by filtering candidate source tasks based on modality and RoI characteristics. Our experiments on brain matter, brain tumor, and white matter hyperintensities segmentation datasets reveal that transferring from different tasks under the same modality is often more successful than transferring from the same task under different modalities. Furthermore, within the same modality, transferring from the source task that has stronger RoI shape similarity with the target task can significantly improve the final transfer performance. And such similarity can be captured using the Structural Similarity index in the label space.


Equivariant Shape-Conditioned Generation of 3D Molecules for Ligand-Based Drug Design

Adams, Keir, Coley, Connor W.

arXiv.org Artificial Intelligence

Shape-based virtual screening is widely employed in ligand-based drug design to search chemical libraries for molecules with similar 3D shapes yet novel 2D chemical structures compared to known ligands. 3D deep generative models have the potential to automate this exploration of shape-conditioned 3D chemical space; however, no existing models can reliably generate valid drug-like molecules in conformations that adopt a specific shape such as a known binding pose. We introduce a new multimodal 3D generative model that enables shape-conditioned 3D molecular design by equivariantly encoding molecular shape and variationally encoding chemical identity. We ensure local geometric and chemical validity of generated molecules by using autoregressive fragment-based generation with heuristic bonding geometries, allowing the model to prioritize the scoring of rotatable bonds to best align the growing conformational structure to the target shape. We evaluate our 3D generative model in tasks relevant to drug design including shape-conditioned generation of chemically diverse molecular structures and shape-constrained molecular property optimization, demonstrating its utility over virtual screening of enumerated libraries.


Gradient Networks: Explicit Shape Matching Without Extracting Edges

Hsiao, Edward (Carnegie Mellon University) | Hebert, Martial (Carnegie Mellon University)

AAAI Conferences

We present a novel framework for shape-based template matching in images. While previous approaches required brittle contour extraction, considered only local information, or used coarse statistics, we propose to match the shape explicitly on low-level gradients by formulating the problem as traversing paths in a gradient network. We evaluate our algorithm on a challenging dataset of objects in cluttered environments and demonstrate significant improvement over state-of-the-art methods for shape matching and object detection.