Abstract

Approximately 30% of clear cell renal cell carcinoma (ccRCC) patients develop metastatic spread at the first diagnosis. Therefore, identifying a useful biomarker to predict ccRCC metastasis or therapeutic effectiveness in ccRCC patients is urgently needed. Previously, we demonstrated that lactotransferrin (LTF) downregulation enhanced the metastatic potential of ccRCC. Here, we show that LTF expression conversely associates with the mTORC1 activity as simulated by gene set enrichment analysis (GSEA). Moreover, Western blot analyses revealed that the LTF knockdown promoted, but the inclusion of recombinant human LTF protein suppressed, the phosphorylation of Akt/mTOR proteins in the detected ccRCC cells. Kaplan–Meier analyses demonstrated that the signature of combining an upregulated mTORC1 activity with a downregulated LTF expression referred to a worse overall and progression-free survival probabilities and associated with distant cancer metastasis in TCGA ccRCC patients. Furthermore, we found that the LTF-suppressed Akt/mTOR activation triggered an increased formation of autophagy in the highly metastatic ccRCC cells. The addition of autophagy inhibitor 3-methyadenine restored the LTF-suppressed cellular migration ability of highly metastatic ccRCC cells. Receiver operating characteristic (ROC) analyses showed that the expression of the LTF and MTORC1 gene set, not the autophagy gene set, could be the useful biomarkers to predict 5-year overall survival rate and cancer progression in ccRCC patients. Significantly, the signature of combining mTORC1 upregulation and LTF downregulation was shown as an independent prognostic factor in a multivariate analysis under the progression-free survival condition using the TCGA ccRCC database. Finally, the treatment with mTOR inhibitor rapamycin predominantly reduced the formation of autophagy and ultimately mitigated the cellular migration ability of ccRCC cells with LTF knockdown. Our findings suggest that LTF downregulation is a biomarker for guiding the use of mTOR inhibitors to combat metastatic ccRCC in the clinic.

Highlights

  • Renal cell carcinoma (RCC) accounts for approximately 90% of kidney cancers and is classified into three major subtypes clear cell RCC, papillary RCC and chromophobe RCC. clear cell renal cell carcinoma (ccRCC) is the main subtype (>75%) and correlates with the leading cause of deaths in patients with kidney cancer [1]

  • These findings suggest that LTF downregulation might be a useful biomarker to predict the therapeutic effectiveness of mechanistic target of rapamycin (mTOR) inhibitors on combating metastatic ccRCC in the clinic

  • In our previous report [24], we have demonstrated that a low-level LTF expression is associated with a high risk for cancer metastasis and poor prognosis in TCGA ccRCC

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Summary

Introduction

Renal cell carcinoma (RCC) accounts for approximately 90% of kidney cancers and is classified into three major subtypes clear cell RCC (ccRCC), papillary RCC (pRCC) and chromophobe RCC (chRCC). ccRCC is the main subtype (>75%) and correlates with the leading cause of deaths in patients with kidney cancer [1]. Renal cell carcinoma (RCC) accounts for approximately 90% of kidney cancers and is classified into three major subtypes clear cell RCC (ccRCC), papillary RCC (pRCC) and chromophobe RCC (chRCC). CcRCC is the main subtype (>75%) and correlates with the leading cause of deaths in patients with kidney cancer [1]. 30% of ccRCC patients with localized disease develop distant metastases after nephrectomy, which are linked to a high risk of mortality [2]. The therapeutic effectiveness of these TKIs on metastatic ccRCC still needs to be improved [3]. As a result, identifying a useful biomarker is urgently needed to guide the administration of TKIs in combating metastatic ccRCC clinically. Lactotransferrin (LTF), name lactoferrin, was firstly detected in mammary secretions and reported to be synthesized by most mammalian tissues [4,5,6]

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