AI-assisted Cervical Cancer Diagnosis System

About it

The LBC AI-Assisted Diagnostic System is designed for liquid-based cervical cytology.
It automatically classifies slides, detects abnormal cells, and generates reports compliant with The Bethesda System (TBS) standards.
Clinically validated on over one million samples, it reduces pathologists’ workload, prevents missed diagnoses, and supports large-scale cervical cancer screening and research.

TBS-Based Lesion Classification

Detects and grades cervical lesions according to The Bethesda System (TBS), covering a full spectrum of pathological changes.

Comprehensive Infection Detection

Simultaneously identifies Trichomonas, fungi, Actinomyces, and other microbial infections for more complete diagnostic insight.

Risk-Prioritized Review

Automatically ranks slides by lesion severity, allowing pathologists to focus on high-risk areas and improve reading efficiency.

High Clinical Compatibility

Supports multiple sample preparation methods, including membrane, sedimentation, and centrifugation techniques.

Flexible Format Adaptation

Compatible with slide formats and image outputs from various manufacturers and scanner systems.

Certified & Compliant

The first pathology AI in China with a Class II Medical Device Certificate, fully compliant with medical data standards and integrable with hospital LIS systems.

Recognizable Lesion and Infection Types
Category Detected Types Description
Epithelial Lesions HSIL, ASC-H, LSIL, ASC-US Covers the full range of squamous intraepithelial abnormalities based on The Bethesda System (TBS).
Glandular Lesions AGC-NOS, Endocervical glandular cells Detects abnormal glandular changes including atypical endocervical or endometrial cells.
Microbial Infections Trichomonas, Candida, Clue cells, Actinomyces, Herpes simplex virus (HSV) Identifies common infectious agents and inflammatory indicators in cervical cytology.

Powering global digital pathology with performance, scale, and trust

The Numbers Behind Our Innovation

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Sensitivity
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Negative Predictive Rate
0M+
Cervical Cell Data

Network and GPU Server Requirements