2016-595 DEEP-LEARNING-BASED COMPUTERIZED PROSTATE CANCER CLASSIFICATION USING A HIERARCHICAL CLASSIFICATION FRAMEWORK

Case No. 2016-595

 

SUMMARY

UCLA researchers in the Department of Radiological Sciences have developed a deep-learning-based computerized algorithm for classification of prostate cancer using multi-parametric-MRI images.

 

BACKGROUND

Prostate cancer is currently the most common form of cancer found in men. Diagnostic imaging is a crucial component of classifying the severity of prostate cancer. Multi-parametric magnetic resonance imaging (mp-MRI) is used to differentiate between clinically significant and indolent lesions in prostates. However, this is complicated due to the ambiguity of lesion appearances in prostate cancer and lack of standardized parameters for analyzing mp-MRI images. To address this issue, computer-aided diagnosis (CAD) algorithms have been garnering interest as these machine-learning based tools could increase accuracy and avoid inconsistencies in diagnoses. Unfortunately, current machine-learning methods, such as deep learning, are limited in their use for CAD due to their need for massive clinical datasets for training. Unlocking the potential to use deep learning methods for CAD could vastly improve image analysis tools available for prostate cancer diagnosis.

 

INNOVATION

UCLA researchers have developed a novel prostate cancer classification algorithm using deep learning method for automatic analysis of mp-MRI images. This algorithm overcomes the issue of having limited training samples and therefore can be applied to multiple clinical domains, not just prostate cancer diagnosis. Furthermore, this invention does not require images of precise lesion boundaries for accurate analysis, creating a more convenient and robust workflow.

 

APPLICATIONS

Diagnosis of cancer or other medical conditions using medical imaging (mp-MRI)

Research tool for standardized analysis of clinical samples

 

ADVANTAGES

Avoids the need for handcrafted features

Higher classification accuracy

Applicable to a variety of clinical domains

Not limited by training samples

Only requires approximate image patches containing the lesion, instead of precise lesion boundaries; more convenient

 

STATE OF DEVELOPMENT

The researchers have developed the invention and have successfully reduced the invention to practice.

 

PATENT STATUS

Patent Pending

Patent Information:
For More Information:
Nikolaus Traitler
Business Development Officer (BDO)
nick.traitler@tdg.ucla.edu
Inventors:
Kyung Hyun Sung
William Hsu
Shiwen Shen
Xinran Zhong