Document detail
ID

doi:10.1186/s13020-024-00963-5...

Author
Wang, Lan Zhang, Qian Zhang, Peng Wu, Bowen Chen, Jun Gong, Jiamin Tang, Kaiqiang Du, Shiyu Li, Shao
Langue
en
Editor

BioMed Central

Category

Medicine & Public Health

Year

2024

listing date

7/3/2024

Keywords
deep learning tongue images inquiry information precancerous lesions of gastric ca... pre-endoscopic screening gastric independent auc cancer high-risk screening plgc 0 05 aitonguequiry p < 0 artificial pre-endoscopic
Metrics

Abstract

Background Given the high cost of endoscopy in gastric cancer (GC) screening, there is an urgent need to explore cost-effective methods for the large-scale prediction of precancerous lesions of gastric cancer (PLGC).

We aim to construct a hierarchical artificial intelligence-based multimodal non-invasive method for pre-endoscopic risk screening, to provide tailored recommendations for endoscopy.

Methods From December 2022 to December 2023, a large-scale screening study was conducted in Fujian, China.

Based on traditional Chinese medicine theory, we simultaneously collected tongue images and inquiry information from 1034 participants, considering the potential of these data for PLGC screening.

Then, we introduced inquiry information for the first time, forming a multimodality artificial intelligence model to integrate tongue images and inquiry information for pre-endoscopic screening.

Moreover, we validated this approach in another independent external validation cohort, comprising 143 participants from the China-Japan Friendship Hospital.

Results A multimodality artificial intelligence-assisted pre-endoscopic screening model based on tongue images and inquiry information (AITonguequiry) was constructed, adopting a hierarchical prediction strategy, achieving tailored endoscopic recommendations.

Validation analysis revealed that the area under the curve (AUC) values of AITonguequiry were 0.74 for overall PLGC (95% confidence interval (CI) 0.71–0.76, p < 0.05) and 0.82 for high-risk PLGC (95% CI 0.82–0.83, p < 0.05), which were significantly and robustly better than those of the independent use of either tongue images or inquiry information alone.

In addition, AITonguequiry has superior performance compared to existing PLGC screening methodologies, with the AUC value enhancing 45% in terms of PLGC screening (0.74 vs. 0.51, p < 0.05) and 52% in terms of high-risk PLGC screening (0.82 vs. 0.54, p < 0.05).

In the independent external verification, the AUC values were 0.69 for PLGC and 0.76 for high-risk PLGC.

Conclusion Our AITonguequiry artificial intelligence model, for the first time, incorporates inquiry information and tongue images, leading to a higher precision and finer-grained pre-endoscopic screening of PLGC.

This enhances patient screening efficiency and alleviates patient burden.

Wang, Lan,Zhang, Qian,Zhang, Peng,Wu, Bowen,Chen, Jun,Gong, Jiamin,Tang, Kaiqiang,Du, Shiyu,Li, Shao, 2024, Development of an artificial intelligent model for pre-endoscopic screening of precancerous lesions in gastric cancer, BioMed Central

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