Deep learning-enabled high-speed, multi-parameter diffuse optical tomography.
J Biomed Opt
; 29(7): 076004, 2024 Jul.
Article
in En
| MEDLINE
| ID: mdl-39035576
ABSTRACT
Significance:
Frequency-domain diffuse optical tomography (FD-DOT) could enhance clinical breast tumor characterization. However, conventional diffuse optical tomography (DOT) image reconstruction algorithms require case-by-case expert tuning and are too computationally intensive to provide feedback during a scan. Deep learning (DL) algorithms front-load computational and tuning costs, enabling high-speed, high-fidelity FD-DOT.Aim:
We aim to demonstrate a simultaneous reconstruction of three-dimensional absorption and reduced scattering coefficients using DL-FD-DOT, with a view toward real-time imaging with a handheld probe.Approach:
A DL model was trained to solve the DOT inverse problem using a realistically simulated FD-DOT dataset emulating a handheld probe for human breast imaging and tested using both synthetic and experimental data.Results:
Over a test set of 300 simulated tissue phantoms for absorption and scattering reconstructions, the DL-DOT model reduced the root mean square error by 12 % ± 40 % and 23 % ± 40 % , increased the spatial similarity by 17 % ± 17 % and 9 % ± 15 % , increased the anomaly contrast accuracy by 9 % ± 9 % ( µ a ), and reduced the crosstalk by 5 % ± 18 % and 7 % ± 11 % , respectively, compared with model-based tomography. The average reconstruction time was reduced from 3.8 min to 0.02 s for a single reconstruction. The model was successfully verified using two tumor-emulating optical phantoms.Conclusions:
There is clinical potential for real-time functional imaging of human breast tissue using DL and FD-DOT.Key words
Full text:
1
Collection:
01-internacional
Database:
MEDLINE
Main subject:
Algorithms
/
Image Processing, Computer-Assisted
/
Breast Neoplasms
/
Phantoms, Imaging
/
Tomography, Optical
/
Deep Learning
Limits:
Female
/
Humans
Language:
En
Journal:
J Biomed Opt
Journal subject:
ENGENHARIA BIOMEDICA
/
OFTALMOLOGIA
Year:
2024
Document type:
Article
Affiliation country:
United kingdom
Country of publication:
United States