Deep Learning-Based Automated Detection of the Middle Cerebral Artery in Transcranial Doppler Ultrasound Examinations

  • Hyeon Woo Lee
  • , William Shi
  • , Rashid Al Mukaddim
  • , Elizabeth Brunelle
  • , Abhinav Palisetti
  • , Syed M. Imaduddin
  • , Phavalan Rajendram
  • , Diego Incontri
  • , Vasileios Arsenios Lioutas
  • , Thomas Heldt
  • , Balasundar I. Raju

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Objective: Transcranial Doppler (TCD) ultrasound has significant clinical value for assessing cerebral hemodynamics, but its reliance on operator expertise limits broader clinical adoption. In this work, we present a lightweight real-time deep learning-based approach capable of automatically identifying the middle cerebral artery (MCA) in TCD Color Doppler images. Methods: Two state-of-the-art object detection models, YOLOv10 and Real-Time Detection Transformers (RT-DETR), were investigated for automated MCA detection in real-time. TCD Color Doppler data (41 subjects; 365 videos; 61,611 frames) were collected from neurologically healthy individuals (n = 31) and stroke patients (n = 10). MCA bounding box annotations were performed by clinical experts on all frames. Model training consisted of pretraining utilizing a large abdominal ultrasound dataset followed by subsequent fine-tuning on acquired TCD data. Detection performance at the instance and frame levels, and inference speed were assessed through four-fold cross-validation. Inter-rater agreement between model and two human expert readers was assessed using distance between bounding boxes and inter-rater variability was quantified using the individual equivalence coefficient (IEC) metric. Results: Both YOLOv10 and RT-DETR models showed comparable frame level accuracy for MCA presence, with F1 scores of 0.884 ± 0.023 and 0.884 ± 0.019 respectively. YOLOv10 outperformed RT-DETR for instance-level localization accuracy (AP: 0.817 vs. 0.780) and had considerably faster inference speed on a desktop CPU (11.6 ms vs. 91.14 ms). Furthermore, YOLOv10 showed an average inference time of 36 ms per frame on a tablet device. The IEC was −1.08 with 95 % confidence interval: [−1.45, −0.19], showing that the AI predictions deviated less from each reader than the readers’ annotations deviated from each other. Conclusion: Real-time automated detection of the MCA is feasible and can be implemented on mobile platforms, potentially enabling wider clinical adoption by less-trained operators in point-of-care settings.

Original languageBritish English
JournalUltrasound in Medicine and Biology
DOIs
StateAccepted/In press - 2025

Keywords

  • Deep Learning
  • Middle Cerebral Artery
  • Object Detection
  • Real-Time Detection
  • RT-DETR
  • Transcranial Doppler
  • Ultrasound Imaging
  • YOLOv10

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