Back to Search Start Over

Quantitative Echocardiography: Real-Time Quality Estimation and View Classification Implemented on a Mobile Android Device

Authors :
Christina Luong
Delaram Behnami
Haotian Zhang
Nathan Van Woudenberg
Purang Abolmaesumi
Hooman Vaseli
Hani Girgis
Amir H. Abdi
Robert Rohling
Ken Gin
Teresa Tsang
Zhibin Liao
Source :
Simulation, Image Processing, and Ultrasound Systems for Assisted Diagnosis and Navigation ISBN: 9783030010447, POCUS/BIVPCS/CuRIOUS/CPM@MICCAI
Publication Year :
2018
Publisher :
Springer International Publishing, 2018.

Abstract

Accurate diagnosis in cardiac ultrasound requires high quality images, containing different specific features and structures depending on which of the 14 standard cardiac views the operator is attempting to acquire. Inexperienced operators can have a great deal of difficulty recognizing these features and thus can fail to capture diagnostically relevant heart cines. This project aims to mitigate this challenge by providing operators with real-time feedback in the form of view classification and quality estimation. Our system uses a frame grabber to capture the raw video output of the ultrasound machine, which is then fed into an Android mobile device, running a customized mobile implementation of the TensorFlow inference engine. By multi-threading four TensorFlow instances together, we are able to run the system at 30 Hz with a latency of under 0.4 s.

Details

ISBN :
978-3-030-01044-7
ISBNs :
9783030010447
Database :
OpenAIRE
Journal :
Simulation, Image Processing, and Ultrasound Systems for Assisted Diagnosis and Navigation ISBN: 9783030010447, POCUS/BIVPCS/CuRIOUS/CPM@MICCAI
Accession number :
edsair.doi...........716e2a04e1e3662605aebae421b62ad3