Features Partner Sites Information LinkXpress hp
Sign In
Advertise with Us
LGC Clinical Diagnostics

Download Mobile App




AI-Based Blood Test Detects Ovarian Cancer With 93% Accuracy

By LabMedica International staff writers
Posted on 30 Jan 2024

Ovarian cancer, often termed the silent killer, typically presents no symptoms in its initial stages, leading to late detection when treatment becomes challenging. More...

The stark contrast in survival rates highlights the urgent need for early diagnosis: while late-stage ovarian cancer patients have a five-year survival rate of around 31% post-treatment, early detection and treatment can raise this rate to over 90%. Despite over three decades of research, developing an accurate early diagnostic test for ovarian cancer has proved challenging. This difficulty stems from the disease's molecular origins, where multiple pathways can lead to the same cancer type.

Scientists at the Georgia Tech Integrated Cancer Research Center (ICRC, Atlanta, GA, USA) have now made a breakthrough by integrating machine learning with blood metabolite information, developing a test that can detect ovarian cancer with 93% accuracy in their study group. This test outperforms existing detection methods, especially in identifying early-stage ovarian disease among women clinically considered normal. The researchers have created a novel diagnostic approach, utilizing a patient's metabolic profile to assign a more precise probability of the presence or absence of the disease.

Mass spectrometry, used to identify metabolites in blood through their mass and charge, faces a limitation: less than 7% of these metabolites in human blood have been chemically characterized. Thus, pinpointing specific molecular processes behind an individual's metabolic profile remains a challenge. Nevertheless, the team recognized the potential of using the presence of varying metabolites, as detected by mass spectrometry, to create accurate predictive models using machine learning. This approach is similar to using individual facial features for developing facial recognition algorithms.

In their innovative method, the researchers combined metabolomic profiles with machine learning classifiers, achieving 93% accuracy in a study involving 564 women from Georgia, North Carolina, Philadelphia, and Western Canada. This group included 431 active ovarian cancer patients and 133 women without the disease. Ongoing studies aim to explore the test's ability to detect very early-stage disease in symptom-free women. The vision for clinical application is a future where individuals with a metabolic profile indicating a low likelihood of cancer undergo annual monitoring, while those with scores suggesting a high probability of ovarian cancer receive more frequent monitoring or immediate referral for advanced screening.

“This personalized, probabilistic approach to cancer diagnostics is more clinically informative and accurate than traditional binary (yes/no) tests,” said John McDonald, professor emeritus in the School of Biological Sciences, founding director of the ICRC, and the study’s corresponding author. “It represents a promising new direction in the early detection of ovarian cancer, and perhaps other cancers as well.”

Related Links:
Georgia Tech


Platinum Member
ADAMTS-13 Protease Activity Test
ATS-13 Activity Assay
Verification Panels for Assay Development & QC
Seroconversion Panels
POCT Fluorescent Immunoassay Analyzer
FIA Go
Gold Member
High-Density Lipoprotein Containing Cholesterol Assay
HDL-c direct FS
Read the full article by registering today, it's FREE! It's Free!
Register now for FREE to LabMedica.com and get access to news and events that shape the world of Clinical Laboratory Medicine.
  • Free digital version edition of LabMedica International sent by email on regular basis
  • Free print version of LabMedica International magazine (available only outside USA and Canada).
  • Free and unlimited access to back issues of LabMedica International in digital format
  • Free LabMedica International Newsletter sent every week containing the latest news
  • Free breaking news sent via email
  • Free access to Events Calendar
  • Free access to LinkXpress new product services
  • REGISTRATION IS FREE AND EASY!
Click here to Register








Channels

Clinical Chemistry

view channel
Image: QIP-MS could predict and detect myeloma relapse earlier compared to currently used techniques (Photo courtesy of Adobe Stock)

Mass Spectrometry-Based Monitoring Technique to Predict and Identify Early Myeloma Relapse

Myeloma, a type of cancer that affects the bone marrow, is currently incurable, though many patients can live for over 10 years after diagnosis. However, around 1 in 5 individuals with myeloma have a high-risk... Read more

Immunology

view channel
Image: The cancer stem cell test can accurately choose more effective treatments (Photo courtesy of University of Cincinnati)

Stem Cell Test Predicts Treatment Outcome for Patients with Platinum-Resistant Ovarian Cancer

Epithelial ovarian cancer frequently responds to chemotherapy initially, but eventually, the tumor develops resistance to the therapy, leading to regrowth. This resistance is partially due to the activation... Read more

Technology

view channel
Image: Ziyang Wang and Shengxi Huang have developed a tool that enables precise insights into viral proteins and brain disease markers (Photo courtesy of Jeff Fitlow/Rice University)

Light Signature Algorithm to Enable Faster and More Precise Medical Diagnoses

Every material or molecule interacts with light in a unique way, creating a distinct pattern, much like a fingerprint. Optical spectroscopy, which involves shining a laser on a material and observing how... Read more

Industry

view channel
Image: The collaboration aims to leverage Oxford Nanopore\'s sequencing platform and Cepheid\'s GeneXpert system to advance the field of sequencing for infectious diseases (Photo courtesy of Cepheid)

Cepheid and Oxford Nanopore Technologies Partner on Advancing Automated Sequencing-Based Solutions

Cepheid (Sunnyvale, CA, USA), a leading molecular diagnostics company, and Oxford Nanopore Technologies (Oxford, UK), the company behind a new generation of sequencing-based molecular analysis technologies,... Read more
Copyright © 2000-2025 Globetech Media. All rights reserved.