| Literature DB >> 27690297 |
Sameer Chopra1, Jie Liu2, Mehrdad Alemozaffar1, Peter W Nichols3, Manju Aron3, Daniel J Weisenberger4, Clayton K Collings1, Sumeet Syan1, Brian Hu5, Mihir Desai1, Monish Aron1, Vinay Duddalwar6, Inderbir Gill1, Gangning Liang1, Kimberly D Siegmund2.
Abstract
PURPOSE: The clinical management of small renal masses (SRMs) is challenging since the current methods for distinguishing between benign masses and malignant renal cell carcinomas (RCCs) are frequently inaccurate or inconclusive. In addition, renal cancer subtypes also have different treatments and outcomes. High false negative rates increase the risk of cancer progression and indeterminate diagnoses result in unnecessary and potentially morbid surgical procedures. EXPERIMENTALEntities:
Keywords: DNA methylation; kidney cancer; small renal mass; tumor classification
Mesh:
Substances:
Year: 2017 PMID: 27690297 PMCID: PMC5354921 DOI: 10.18632/oncotarget.12276
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Multidimensional scaling plot of 697 training samples using the 500 features with greatest median absolute deviation
Figure 2Training data set heatmap of 600 differentially methylated features (rows) in 697 kidney samples (columns)
Columns are ordered by tissue subtype, and rows are ordered by sets of predictive features. Within each feature set, rows are ordered by average DNA methylation level in normal kidney.
Clinical and pathological characteristics of samples included in the analysis
| Patient (N) | 100 |
|---|---|
| Median age, years (Range) | 65 (21-87) |
| Gender (%) | |
| Median BMI, kg/m2 (Range) | 27.7 (16.9-47.1) |
| Median clinical tumor size, cm (Range) | 3 (1.0-10) |
| Mode of presentation (%) | |
| Surgical treatment (%) | |
| Median pathological tumor size, cm (Range) | 2.7 (1.0-9.5) |
| Final diagnosis (%) | |
| pT Staging (%) | |
| Lymph node involvement (%) | |
| Distant metastasis (%) |
Figure 3Six predicted probabilities for 272 ex vivo needle biopsy samples (102 normal kidney, 15 AML, 26 oncocytoma, 98 clear cell, 14 papillary, 6 chromophobe, 10 other benign, 1 other malignant)
Color bar at the bottom denotes the diagnosis by pathology (blue: normal, yellow: AML, orange: oncocytoma, red: clear cell, black: papillary, purple: chromophobe, green: other). The probabilities are ordered by subgroup and the probability the sample is assigned to the correct subgroup.
Validation of 272 ex vivo needle biopsies (100 patients)
| Non-Malignant | Malignant | |||||
|---|---|---|---|---|---|---|
| Benign$ | Oncocytoma | Normal | Clear Cell | Papillary | Chromophobe | |
| Ex Vivo Biopsy (N) | 26 | 26 | 102 | 98 | 14 | 6 |
| Correctly Predicted Subtype (N, %) | 11 (73%)* | 15 (58%) | 100 (98%) | 89 (91%) | 9 (64%) | 6 (100%) |
| Correctly Predicted Non-Malignant | 12 (80%)* | 26 (100%) | 100 (98%) | 89 (91%) | 12 (86%) | 6 (100%) |
| Tumors (N) | 13 | 16 | - | 59 | 8 | 3 |
| Correctly Predicted Subtype (N, %)1 | 6 (75%)* | 7 (44%) | - | 53 (90%) | 5 (63%) | 3 (100%) |
| Correctly Predicted Non-Malignant | 6 (75%)* | 16 (100%) | - | 54 (92%) | 7 (88%) | 3 (100%) |
$ - consists of angiomyolipoma and other uncommon non-malignant lesions (i.e. capillary hemangioma, renal tubular hyperplasia, etc.)
1 - patient assigned subtype of biopsy with maximum posterior probability
* - prediction only of angiomyolipoma (N = 15 ex vivo samples, N = 8 tumors)