TY - JOUR
T1 - Predicting distant metastatic sites of cancer using perturbed correlations of miRNAs with competing endogenous RNAs
AU - Cho, Myeonghoon
AU - Park, Byungkyu
AU - Han, Kyungsook
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/4
Y1 - 2025/4
N2 - Cancer metastasis is the dissemination of tumor cells from the primary tumor site to other parts of the body via the lymph system or bloodstream. Metastasis is the leading cause of cancer associated death. Despite the significant advances in cancer research and treatment over the past decades, metastasis is not fully understood and difficult to predict in advance. In particular, distant metastasis is more difficult to predict than lymph node metastasis, which is the spread of cancer cells to nearby lymph nodes. Distant metastatic sites is even more difficult to predict than the occurrence of distant metastasis because the problem of predicting distant metastatic sites is a multi-class and multi-label classification problem; there are more than two classes for distant metastatic sites (bone, liver, lung, and other organs), and a single sample can have multiple labels for multiple metastatic sites. This paper presents a new method for predicting distant metastatic sites based on correlation changes of miRNAs with competing endogenous RNAs (ceRNAs) in individual cancer patients. Testing the method on independent datasets of several cancer types demonstrated a high prediction performance. In comparison of our method with other state of the art methods, our method showed a much better and more stable performance than the others. Our method can be used as useful aids in determining treatment options by predicting if and where metastasis will occur in cancer patients at early stages.
AB - Cancer metastasis is the dissemination of tumor cells from the primary tumor site to other parts of the body via the lymph system or bloodstream. Metastasis is the leading cause of cancer associated death. Despite the significant advances in cancer research and treatment over the past decades, metastasis is not fully understood and difficult to predict in advance. In particular, distant metastasis is more difficult to predict than lymph node metastasis, which is the spread of cancer cells to nearby lymph nodes. Distant metastatic sites is even more difficult to predict than the occurrence of distant metastasis because the problem of predicting distant metastatic sites is a multi-class and multi-label classification problem; there are more than two classes for distant metastatic sites (bone, liver, lung, and other organs), and a single sample can have multiple labels for multiple metastatic sites. This paper presents a new method for predicting distant metastatic sites based on correlation changes of miRNAs with competing endogenous RNAs (ceRNAs) in individual cancer patients. Testing the method on independent datasets of several cancer types demonstrated a high prediction performance. In comparison of our method with other state of the art methods, our method showed a much better and more stable performance than the others. Our method can be used as useful aids in determining treatment options by predicting if and where metastasis will occur in cancer patients at early stages.
KW - Competing endogenous RNA
KW - Distant metastasis
KW - Metastatic site
KW - Prediction model
UR - http://www.scopus.com/inward/record.url?scp=85215070759&partnerID=8YFLogxK
U2 - 10.1016/j.compbiolchem.2025.108353
DO - 10.1016/j.compbiolchem.2025.108353
M3 - Article
C2 - 39827643
AN - SCOPUS:85215070759
SN - 1476-9271
VL - 115
JO - Computational Biology and Chemistry
JF - Computational Biology and Chemistry
M1 - 108353
ER -