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 hp
Sign In
Advertise with Us

Download Mobile App




AI-Generated Sensors Open New Paths for Early Cancer Detection

By LabMedica International staff writers
Posted on 13 Jan 2026

Cancers are far easier to treat when detected early, yet many tumors remain invisible until they are advanced or have recurred after surgery. More...

Early-stage disease often produces signals that are too weak for conventional diagnostic tools to detect reliably. To overcome this challenge, researchers are developing ultra-sensitive molecular sensors that can amplify subtle biological signals linked to cancer. A new artificial intelligence (AI)-driven approach now shows how such sensors could enable early cancer detection using a simple urine test.

In research led by the Massachusetts Institute of Technology (MIT, Cambridge, MA, USA), in collaboration with Microsoft Research (Redmond, WA, USA), the team developed an AI system called CleaveNet to design short protein sequences, or peptides, that are selectively cut by proteases, enzymes that are often overactive in cancer cells. These peptides are attached to nanoparticles, creating molecular sensors that respond to cancer-associated protease activity anywhere in the body.

Protease-activated nanoparticles are designed to travel through the body after ingestion or inhalation. When they encounter cancer-linked proteases, the peptides on their surface are cleaved, releasing fragments that are filtered into the urine. CleaveNet was trained using publicly available data on around 20,000 peptide–protease interactions, focusing on matrix metalloproteinases. The AI model generates candidate peptide sequences and predicts how selectively and efficiently each will be cleaved by specific proteases of interest.

Using CleaveNet, the researchers successfully designed novel peptide sequences that were highly selective for MMP13, a protease involved in tumor invasion and metastasis. These peptides had not appeared in the training data but showed strong performance in laboratory validation. Compared with earlier trial-and-error approaches, the AI-designed peptides improved specificity, reduced cross-reactivity, and strengthened diagnostic signals, according to the study published in Nature Communications.

AI-designed protease sensors could enable multiplexed detection of cancer signatures using a simple at-home urine test, potentially identifying disease at very early stages or after recurrence. The approach may also support the detection of dozens of cancer types by combining sensors for different enzyme classes. In addition to diagnostics, CleaveNet-designed peptides could be incorporated into targeted cancer therapies, allowing drugs to be released only within tumor environments, reducing side effects and improving efficacy.

Related Links:
MIT
Microsoft Research


Gold Member
Collection and Transport System
PurSafe Plus®
POC Helicobacter Pylori Test Kit
Hepy Urease Test
Urine Chemistry Control
Dropper Urine Chemistry Control
Gold Member
Ketosis and DKA Test
D-3-Hydroxybutyrate (Ranbut) Assay
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

Hematology

view channel
Image: Residual leukemia cells may predict long-term survival in acute myeloid leukemia (Photo courtesy of Shutterstock)

MRD Tests Could Predict Survival in Leukemia Patients

Acute myeloid leukemia is an aggressive blood cancer that disrupts normal blood cell production and often relapses even after intensive treatment. Clinicians currently lack early, reliable markers to predict... Read more

Pathology

view channel
Image: AI models combined with DOCI can classify thyroid cancer subtypes (Photo courtesy of T. Vasse et al., doi 10.1117/1.BIOS.3.1.015001)

AI-Powered Label-Free Optical Imaging Accurately Identifies Thyroid Cancer During Surgery

Thyroid cancer is the most common endocrine cancer, and its rising detection rates have increased the number of patients undergoing surgery. During tumor removal, surgeons often face uncertainty in distinguishing... Read more
Copyright © 2000-2026 Globetech Media. All rights reserved.