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Identification of diagnostic metabolic signatures in clear cell renal cell carcinoma using mass spectrometry imaging
Authors:Kanchustambham Vijayalakshmi  Vishnu Shankar  Ryan M. Bain  Rosalie Nolley  Geoffrey A. Sonn  Chia-Sui Kao  Hongjuan Zhao  Robert Tibshirani  Richard N. Zare  James D. Brooks
Affiliation:1. Department of Chemistry, Stanford University, Stanford, California;2. Department of Biomedical Data Science and Statistics, Stanford University, Stanford, California;3. Department of Chemistry, Stanford University, Stanford, California

K.V.L. and V.S. contributed equally to this work

Ryan M. Bain's current address is: Dow Chemical Co., Midland, MI 48674;4. Department of Urology, Stanford University, Stanford, California;5. Department of Pathology, Stanford University, Stanford, California

Abstract:Clear cell renal cell carcinoma (ccRCC) is the most common and lethal subtype of kidney cancer. Intraoperative frozen section (IFS) analysis is used to confirm the diagnosis during partial nephrectomy. However, surgical margin evaluation using IFS analysis is time consuming and unreliable, leading to relatively low utilization. In our study, we demonstrated the use of desorption electrospray ionization mass spectrometry imaging (DESI-MSI) as a molecular diagnostic and prognostic tool for ccRCC. DESI-MSI was conducted on fresh-frozen 23 normal tumor paired nephrectomy specimens of ccRCC. An independent validation cohort of 17 normal tumor pairs was analyzed. DESI-MSI provides two-dimensional molecular images of tissues with mass spectra representing small metabolites, fatty acids and lipids. These tissues were subjected to histopathologic evaluation. A set of metabolites that distinguish ccRCC from normal kidney were identified by performing least absolute shrinkage and selection operator (Lasso) and log-ratio Lasso analysis. Lasso analysis with leave-one-patient-out cross-validation selected 57 peaks from over 27,000 metabolic features across 37,608 pixels obtained using DESI-MSI of ccRCC and normal tissues. Baseline Lasso of metabolites predicted the class of each tissue to be normal or cancerous tissue with an accuracy of 94 and 76%, respectively. Combining the baseline Lasso with the ratio of glucose to arachidonic acid could potentially reduce scan time and improve accuracy to identify normal (82%) and ccRCC (88%) tissue. DESI-MSI allows rapid detection of metabolites associated with normal and ccRCC with high accuracy. As this technology advances, it could be used for rapid intraoperative assessment of surgical margin status.
Keywords:clear cell renal cell carcinoma  nephrectomy  surgical margins  histopathology  electrospray ionization  metabolome
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