Published online Aug 27, 2024. doi: 10.4240/wjgs.v16.i8.2602
Revised: June 8, 2024
Accepted: June 27, 2024
Published online: August 27, 2024
Processing time: 95 Days and 6.5 Hours
This study investigated the construction and clinical validation of a predictive model for neuroaggression in patients with gastric cancer. Gastric cancer is one of the most common malignant tumors in the world, and neuroinvasion is the key factor affecting the prognosis of patients. However, there is a lack of systematic analysis on the construction and clinical application of its prediction model. This study adopted a single-center retrospective study method, collected a large amo
To investigate the value of a model based on clinical data, spectral computed to
A retrospective analysis was performed on 80 gastric cancer patients who under
There were statistically significant differences in sex, carbohydrate antigen 199 expression, tumor thickness, Lauren classification and Borrmann classification between the two groups (all P < 0.05). Among the energy spectrum parameters, there were statistically significant differences in the single energy values (CT60-CT110 keV) at the arterial stage between the two groups (all P < 0.05) and statistically significant differences in CT values, iodide group values, standardized iodide group values and single energy values except CT80 keV at the portal vein stage between the two groups (all P < 0.05). The support vector machine model with the largest area under the curve was selected by image omics analysis, and its area under the curve, sensitivity, specificity, accuracy, P value and pa
The combined model based on clinical features, spectral CT parameters and imaging data has good value for the preoperative prediction of gastric cancer neuroinvasion.
Core Tip: By collecting clinical data of patients with single-center gastric cancer, a predictive model of neuroaggression was constructed and analyzed for clinical validation. The research included screening for relevant factors affecting gastric cancer neuroaggression, building predictive models using statistical and machine learning methods, and evaluating the accuracy and usefulness of the models through cross-validation and external validation. Finally, the performance of the model in clinical practical application is analyzed to provide clinicians with a reliable predictive tool aimed at optimizing the diagnosis and treatment strategies of gastric cancer and improving the prognosis and survival rate of patients.