Physics-Aware Neural Operators for Direct Inversion in 3D Photoacoustic Tomography
About
Learning physics-constrained inverse operators-rather than post-processing physics-based reconstructions-is a broadly applicable strategy for problems with expensive forward models. We demonstrate this principle in three-dimensional photoacoustic computed tomography (3D PACT), where current systems demand dense transducer arrays and prolonged scans, restricting clinical translation. We introduce PANO (PACT imaging neural operator), an end-to-end physics-aware neural operator-a deep learning architecture that generalizes across input sampling densities without retraining-that directly learns the inverse mapping from raw sensor measurements to a 3D volumetric image. Unlike two-step methods that reconstruct then denoise, PANO performs direct inversion in a single pass, jointly embedding physics and data priors. It employs spherical discrete-continuous convolutions to respect hemispherical sensor geometry and Helmholtz equation constraints to ensure physical consistency. PANO reconstructs high-quality images from both simulated and real data across diverse sparse acquisition settings, achieves real-time inference and outperforms the widely-used UBP algorithm by approximately 33 percentage points in cosine similarity on simulated data and 14 percentage points on real phantom data. These results establish a pathway toward more accessible 3D PACT systems for preclinical research, and motivate future in-vivo validation for clinical translation.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D PACT reconstruction | Real phantom data uniform subsampling (test) | Cosine Similarity87.3 | 12 | |
| 3D Photoacoustic Computed Tomography Reconstruction | Simulated Data | Cosine Similarity89.9 | 12 | |
| PACT Reconstruction | Real phantom data 3x subsampling rate (Limited angle (azimuth)) | Cosine Similarity86.4 | 4 | |
| PACT Reconstruction | Real phantom data Limited angle (elevation) 3x subsampling rate | Cosine Similarity86 | 4 | |
| PACT Reconstruction | Real phantom data Uniform 3x subsampling rate | Cosine Similarity92.6 | 4 |