We use cookies to understand how you use our site and to improve your experience. This includes personalizing content and advertising. To learn more, click here. By continuing to use our site, you accept our use of cookies. Cookie Policy.

Features Partner Sites Information LinkXpress
Sign In
Advertise with Us
Sekisui Diagnostics UK Ltd.

Download Mobile App




New Machine Learning Tool Accurately Predicts Prostate Cancer

By HospiMedica International staff writers
Posted on 01 Mar 2019
Print article
Researchers from the Icahn School of Medicine at Mount Sinai (New York, NY, USA) and Keck School of Medicine at the University of Southern California (Los Angeles, CA, USA) have developed a machine-learning framework that can distinguish between low- and high-risk prostate cancer with greater precision than ever before. The framework is expected intended to help physicians, particularly radiologists, in identifying treatment options more accurately for prostate cancer patients, thereby reducing the need for unnecessary clinical intervention.

The standard methods currently being used to assess prostate cancer risk are multi-parametric magnetic resonance imaging (mpMRI), which detects prostate lesions, and the Prostate Imaging Reporting and Data System, version 2 (PI-RADS v2), a five-point scoring system that classifies lesions found on the mpMRI. These tools are intended to soundly predict the likelihood of clinically significant prostate cancer. However, PI-RADS v2 scoring is subjective and does not distinguish clearly between intermediate and malignant cancer levels (scores 3, 4, and 5), resulting in differing interpretations among clinicians most of the time.

In order to remedy this drawback, it has been proposed to combine machine learning with radiomics—a branch of medicine that uses algorithms to extract large amounts of quantitative characteristics from medical images. While other studies have only tested a limited number of machine learning methods to address this limitation, the Mount Sinai and USC researchers have developed a predictive framework that rigorously and systematically assessed many such methods to identify the best-performing one. The framework also leverages larger training and validation data sets than previous studies did, allowing the researchers to classify the patients’ prostate cancer with high sensitivity and an even higher predictive value.

“By rigorously and systematically combining machine learning with radiomics, our goal is to provide radiologists and clinical personnel with a sound prediction tool that can eventually translate to more effective and personalized patient care,” said Gaurav Pandey, PhD, Assistant Professor of Genetics and Genomic Sciences at the Icahn School of Medicine at Mount Sinai and senior corresponding author of the publication alongside co-corresponding author Bino Varghese, PhD, Assistant Professor of Research Radiology at the Keck School of Medicine at USC. “The pathway to predicting prostate cancer progression with high accuracy is ever improving, and we believe our objective framework is a much-needed advancement.”

Related Links:
Icahn School of Medicine at Mount Sinai
Keck School of Medicine at the University of Southern California

Gold Member
SARS‑CoV‑2/Flu A/Flu B/RSV Sample-To-Answer Test
SARS‑CoV‑2/Flu A/Flu B/RSV Cartridge (CE-IVD)
Gold Member
Disposable Protective Suit For Medical Use
Disposable Protective Suit For Medical Use
Silver Member
Compact 14-Day Uninterrupted Holter ECG
NR-314P
New
Oxidized Zirconium Implant Material
OXINIUM

Print article

Channels

Critical Care

view channel
Image: The stretchable microneedle electrode arrays (Photo courtesy of Zhao Research Group)

Stretchable Microneedles to Help In Accurate Tracking of Abnormalities and Identifying Rapid Treatment

The field of personalized medicine is transforming rapidly, with advancements like wearable devices and home testing kits making it increasingly easy to monitor a wide range of health metrics, from heart... Read more

Surgical Techniques

view channel
Image: NeuroBlate NB3 FullFire 1.6mm laser probe is meant for use with the NeuroBlate System (Photo courtesy of Monteris Medical)

World’s Smallest Laser Probe for Brain Procedures Facilitates Ablation of Full Range of Targets

A new probe enhances the ablation capabilities for a broad spectrum of oncology and epilepsy targets, including pediatric applications, by incorporating advanced laser and cooling technologies to support... Read more

Patient Care

view channel
Image: The portable, handheld BeamClean technology inactivates pathogens on commonly touched surfaces in seconds (Photo courtesy of Freestyle Partners)

First-Of-Its-Kind Portable Germicidal Light Technology Disinfects High-Touch Clinical Surfaces in Seconds

Reducing healthcare-acquired infections (HAIs) remains a pressing issue within global healthcare systems. In the United States alone, 1.7 million patients contract HAIs annually, leading to approximately... Read more

Health IT

view channel
Image: First ever institution-specific model provides significant performance advantage over current population-derived models (Photo courtesy of Mount Sinai)

Machine Learning Model Improves Mortality Risk Prediction for Cardiac Surgery Patients

Machine learning algorithms have been deployed to create predictive models in various medical fields, with some demonstrating improved outcomes compared to their standard-of-care counterparts.... Read more

Point of Care

view channel
Image: The Quantra Hemostasis System has received US FDA special 510(k) clearance for use with its Quantra QStat Cartridge (Photo courtesy of HemoSonics)

Critical Bleeding Management System to Help Hospitals Further Standardize Viscoelastic Testing

Surgical procedures are often accompanied by significant blood loss and the subsequent high likelihood of the need for allogeneic blood transfusions. These transfusions, while critical, are linked to various... Read more
Copyright © 2000-2024 Globetech Media. All rights reserved.