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Multiparametric Ultrasound Imaging of Prostate Cancer Using Deep Neural Networks.

Publication ,  Journal Article
Chan, DY; Morris, DC; Moavenzadeh, SR; Lye, TH; Polascik, TJ; Palmeri, ML; Mamou, J; Nightingale, KR
Published in: Ultrasound Med Biol
November 2024

OBJECTIVE: A deep neural network (DNN) was trained to generate a multiparametric ultrasound (mpUS) volume from four input ultrasound-based modalities (acoustic radiation force impulse [ARFI] imaging, shear wave elasticity imaging [SWEI], quantitative ultrasound-midband fit [QUS-MF], and B-mode) for the detection of prostate cancer. METHODS: A DNN was trained using co-registered ARFI, SWEI, MF, and B-mode data obtained in men with biopsy-confirmed prostate cancer prior to radical prostatectomy (15 subjects, comprising 980,620 voxels). Data were obtained using a commercial scanner that was modified to allow user control of the acoustic beam sequences and provide access to the raw image data. For each subject, the index lesion and a non-cancerous region were manually segmented using visual confirmation based on whole-mount histopathology data. RESULTS: In a prostate phantom, the DNN increased lesion contrast-to-noise ratio (CNR) compared to a previous approach that used a linear support vector machine (SVM). In the in vivo test datasets (n = 15), the DNN-based mpUS volumes clearly portrayed histopathology-confirmed prostate cancer and significantly improved CNR compared to the linear SVM (2.79 ± 0.88 vs. 1.98 ± 0.73, paired-sample t-test p < 0.001). In a sub-analysis in which the input modalities to the DNN were selectively omitted, the CNR decreased with fewer inputs; both stiffness- and echogenicity-based modalities were important contributors to the multiparametric model. CONCLUSION: The findings from this study indicate that a DNN can be optimized to generate mpUS prostate volumes with high CNR from ARFI, SWEI, MF, and B-mode and that this approach outperforms a linear SVM approach.

Duke Scholars

Published In

Ultrasound Med Biol

DOI

EISSN

1879-291X

Publication Date

November 2024

Volume

50

Issue

11

Start / End Page

1716 / 1723

Location

England

Related Subject Headings

  • Ultrasonography
  • Prostatic Neoplasms
  • Prostate
  • Phantoms, Imaging
  • Neural Networks, Computer
  • Middle Aged
  • Male
  • Humans
  • Elasticity Imaging Techniques
  • Deep Learning
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Chan, D. Y., Morris, D. C., Moavenzadeh, S. R., Lye, T. H., Polascik, T. J., Palmeri, M. L., … Nightingale, K. R. (2024). Multiparametric Ultrasound Imaging of Prostate Cancer Using Deep Neural Networks. Ultrasound Med Biol, 50(11), 1716–1723. https://doi.org/10.1016/j.ultrasmedbio.2024.07.012
Chan, Derek Y., D Cody Morris, Spencer R. Moavenzadeh, Theresa H. Lye, Thomas J. Polascik, Mark L. Palmeri, Jonathan Mamou, and Kathryn R. Nightingale. “Multiparametric Ultrasound Imaging of Prostate Cancer Using Deep Neural Networks.Ultrasound Med Biol 50, no. 11 (November 2024): 1716–23. https://doi.org/10.1016/j.ultrasmedbio.2024.07.012.
Chan DY, Morris DC, Moavenzadeh SR, Lye TH, Polascik TJ, Palmeri ML, et al. Multiparametric Ultrasound Imaging of Prostate Cancer Using Deep Neural Networks. Ultrasound Med Biol. 2024 Nov;50(11):1716–23.
Chan, Derek Y., et al. “Multiparametric Ultrasound Imaging of Prostate Cancer Using Deep Neural Networks.Ultrasound Med Biol, vol. 50, no. 11, Nov. 2024, pp. 1716–23. Pubmed, doi:10.1016/j.ultrasmedbio.2024.07.012.
Chan DY, Morris DC, Moavenzadeh SR, Lye TH, Polascik TJ, Palmeri ML, Mamou J, Nightingale KR. Multiparametric Ultrasound Imaging of Prostate Cancer Using Deep Neural Networks. Ultrasound Med Biol. 2024 Nov;50(11):1716–1723.
Journal cover image

Published In

Ultrasound Med Biol

DOI

EISSN

1879-291X

Publication Date

November 2024

Volume

50

Issue

11

Start / End Page

1716 / 1723

Location

England

Related Subject Headings

  • Ultrasonography
  • Prostatic Neoplasms
  • Prostate
  • Phantoms, Imaging
  • Neural Networks, Computer
  • Middle Aged
  • Male
  • Humans
  • Elasticity Imaging Techniques
  • Deep Learning