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AI-powered ultrasonic thermometry for HIFU therapy in deep organ

Shunyao Luan, Yongshuo Ji, Yumei Liu, Linling Zhu, Hong Zhao, Haoyu Zhou, Ké Li, Weizhen Zhu, Benpeng Zhu

2024Ultrasonics Sonochemistry45 citationsDOIOpen Access PDF

Abstract

High-intensity focused ultrasound (HIFU) is considered as an important non-invasive way for tumor ablation in deep organs. However, accurate real-time monitoring of the temperature field within HIFU focal area remains a challenge. Although ultrasound technology, compared with other approaches, is a good choice for noninvasive and real-time monitoring on the temperature distribution, traditional ultrasonic thermometry mainly relies on the backscattered signal, which is difficult for high temperature (>50 °C) measurement. Given that artificial intelligence (AI) shows significant potential for biomedical applications, we propose an AI-powered ultrasonic thermometry using an end-to-end deep neural network termed Breath-guided Multimodal Teacher-Student (BMTS), which possesses the capability to elucidate the interaction between HIFU and complex heterogeneous biological media. It has been demonstrated experimentally that two-dimension temperature distribution within HIFU focal area in deep organ can be accurately reconstructed with an average error and a frame speed of 0.8 °C and 0.37 s, respectively. Most importantly, the maximum measurable temperature for ultrasonic technology has been successfully expanded to a record value of 67 °C. This breakthrough indicates that the development of AI-powered ultrasonic thermometry is beneficial for precise HIFU therapy planning in the future.

Topics & Concepts

Ultrasonic sensorBiomedical engineeringMedicineRadiologyUltrasound and Hyperthermia ApplicationsPhotoacoustic and Ultrasonic ImagingInfrared Thermography in Medicine
AI-powered ultrasonic thermometry for HIFU therapy in deep organ | Litcius