4.4 Article

Prediction model of colorectal cancer (CRC) lymph node metastasis based on intestinal bacteria

Journal

CLINICAL & TRANSLATIONAL ONCOLOGY
Volume 25, Issue 6, Pages 1661-1672

Publisher

SPRINGER INT PUBL AG
DOI: 10.1007/s12094-022-03061-w

Keywords

Colorectal cancer (CRC); Lymph node metastasis; Intestinal bacteria; Prediction model; Machine learning algorithm

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This study screened differential intestinal bacteria associated with lymph node metastasis in colorectal cancer and constructed a prediction model. The results showed that certain differential bacteria were not associated with lymph node metastasis in colorectal cancer. In the prediction model, the RF model had the highest prediction accuracy in the discovery set, while the SVM model had the highest prediction accuracy in the test set.
Background Lymph node metastasis is the main metastatic mode of CRC. Lymph node metastasis affects patient prognosis.Objective To screen differential intestinal bacteria for CRC lymph node metastasis and construct a prediction model.Methods First, fecal samples of 119 CRC patients with lymph node metastasis and 110 CRC patients without lymph node metastasis were included for the detection of intestinal bacterial 16S rRNA. Then, bioinformatics analysis of the sequencing data was performed. Community structure and composition analysis, difference analysis, and intragroup and intergroup correlation analysis were conducted between the two groups. Finally, six machine learning models were used to construct a prediction model for CRC lymph node metastasis.Results The community richness and the community diversity at the genus level of the two groups were basically consistent. A total of 12 differential bacteria (Agathobacter, Catenibacterium, norank_f__Oscillospiraceae, Lachnospiraceae_FCS020_group, Lachnospiraceae_UCG-004, etc.) were screened at the genus level. Differential bacteria, such as Agathobacter, Catenibacterium, norank_f__Oscillospiraceae, and Lachnospiraceae_FCS020_group, were more associated with no lymph node metastasis in CRC. In the discovery set, the RF model had the highest prediction accuracy (AUC = 1.00, 98.89% correct, specificity = 55.21%, sensitivity = 55.95%). In the test set, SVM model had the highest prediction accuracy (AUC = 0.73, 72.92% correct, specificity = 69.23%, sensitivity = 88.89%). Lachnospiraceae_FCS020_group was the most important variable in the RF model. Lachnospiraceae_UCG - 004 was the most important variable in the SVM model.Conclusion CRC lymph node metastasis is closely related to intestinal bacteria. The prediction model based on intestinal bacteria can provide a new evaluation method for CRC lymph node metastasis.

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