| Literature DB >> 30871256 |
Tingyan Zhong1, Mengyun Wu2, Shuangge Ma3.
Abstract
Cancer prognosis is of essential interest, and extensive research has been conducted searching for biomarkers with prognostic power. Recent studies have shown that both omics profiles and histopathological imaging features have prognostic power. There are also studies exploring integrating the two types of measurements for prognosis modeling. However, there is a lack of study rigorously examining whether omics measurements have independent prognostic power conditional on histopathological imaging features, and vice versa. In this article, we adopt a rigorous statistical testing framework and test whether an individual gene expression measurement can improve prognosis modeling conditional on high-dimensional imaging features, and a parallel analysis is conducted reversing the roles of gene expressions and imaging features. In the analysis of The Cancer Genome Atlas (TCGA) lung adenocarcinoma and liver hepatocellular carcinoma data, it is found that multiple individual genes, conditional on imaging features, can lead to significant improvement in prognosis modeling; however, individual imaging features, conditional on gene expressions, only offer limited prognostic power. Being among the first to examine the independent prognostic power, this study may assist better understanding the "connectedness" between omics profiles and histopathological imaging features and provide important insights for data integration in cancer modeling.Entities:
Keywords: cancer prognosis; histopathological imaging features; independent prognostic power; omics profiles
Year: 2019 PMID: 30871256 PMCID: PMC6468814 DOI: 10.3390/cancers11030361
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
Figure 1Flowchart of extracting imaging features. Step 1: whole-slide histopathology images are cropped into small subimages of 500 × 500 pixels, and 20 subimages are then randomly selected. Step 2: Imaging features are extracted using CellProfiler [19] for each subimage. Step 3: For each patient, features are averaged.
Sample characteristics.
| Characteristic | LUAD | LIHC |
|---|---|---|
| Sample size | 316 | 358 |
| Age at diagnosis: median (range) | 66 (39–88) | 61 (16–90) |
| Follow-up: median (range) | 6.03 (0–214.77) | 19.25 (0–120.73) |
| Vital status: | ||
| Alive | 213 (67.4%) | 233 (65.0%) |
| Deceased | 103 (32.6%) | 125 (35.0%) |
| Sex: | ||
| Male | 144 (45.6%) | 242 (67.6%) |
| Female | 172 (54.4%) | 116 (32.4%) |
| Cancer stage: | ||
| I | 180 (57.0%) | 166 (46.4%) |
| II | 69 (18.7%) | 82 (22.9%) |
| III | 41 (13%) | 83 (23.2%) |
| IV | 21 (6.6%) | 5 (1.4%) |
| NA | 5 (1.6%) | 22 (6.1%) |
Analysis of LUAD data: representative identified genes.
| Gene | Evidence | PMID |
|---|---|---|
|
| Real-time PCR studies showed that HYAL2 genes were down regulated in non-small cell lung cancer [ | 19140316 |
|
| MAPK1IP1L gene was found to be related with acquired resistance to MET inhibitors in lung cancer cells [ | 28396363 |
|
| Lack of surface class II expression was found to be associated with a specific defect in HLA-DRA induction in non-small cell lung carcinoma cells [ | 8786310 |
|
| Higher levels of hnRNP mRNAs were found in SCLC as compared to NSCLC. hnRNP K protein localization varied with cellular confluence [ | 12871776 |
|
| Osteoactivin (GPNMB) ectodomain protein was shown to promote growth and invasive behavior of human lung cancer cells [ | 26883195 |
|
| Positive correlation was found between gene expressions of two angiogenic factors, VEGF and BMP-2, in lung cancer patients [ | 19324447 |
|
| COMMD9 was demonstrated to promote TFDP1/E2F1 transcriptional activity via interaction with TFDP1 in non-small cell lung cancer [ | 27871936 |
|
| Lung cancer patients in Japan showed an increased frequency of HLA-DRB1*0901 and a decreased frequency of HLA-DRB1*1302 and DRB1*14-related alleles when compared to the other subjects [ | 9808426 |
|
| LARP1 post-transcriptionally regulates mTOR and contributes to cancer progression [ | 25531318 |
|
| ZAK inhibits human lung cancer cell growth via ERK and JNK activation in an AP-1-dependent manner [ | 20331627 |
* The star is a sign indicating the location of the mutated allel.
Analysis of LIHC data: representative identified genes.
| Gene | Evidence | PMID |
|---|---|---|
|
| LAPTM4B is a potential proto-oncogene, whose overexpression is involved in carcinogenesis and progression of HCC [ | 12902989 |
|
| CAPZA1 expression levels were negatively correlated with the biological characteristics of primary HCC and patient prognosis [ | 28093067 |
|
| PLOD2 expression was identified as a significant, independent factor of poor prognosis for HCC patients [ | 22098155 |
|
| STIP1 was upregulated in HCC and associated with poor clinical prognosis [ | 28887036 |
|
| Inhibition of IGF-1R tyrosine kinase (IGF-1R-TK) by NVP-AEW541 induces growth inhibition, apoptosis and cell cycle arrest in human HCC cell lines without accompanying cytotoxicity [ | 16530734 |
|
| HepG2 cells that expressed transgenic HTATIP2 formed more invasive tumors in mice following administration of sorafenib. Sorafenib therapy prolonged recurrence-free survival in patients who expressed lower levels of HTATIP2 compared with higher levels [ | 22922424 |
|
| GNAI3 inhibits tumor cell migration and invasion and is post-transcriptionally regulated by miR-222 in hepatocellular carcinoma [ | 25444921 |
|
| Exportin-1 (XPO1, CRM1) mediates the nuclear export of several key growth regulatory and tumor suppressor proteins [ | 25030088 |
|
| PLVAP was identified as a gene specifically expressed in vascular endothelial cells of HCC but not in non-tumorous liver tissues [ | 25376302 |
|
| HIF-2alpha/EPAS1 expression may play an important role in tumor progression and prognosis of HCC [ | 17589895 |
Figure 2Gene ontology (GO) and pathway enrichment analysis of the identified genes. (a) lung adenocarcinoma (LUAD), (b) liver hepatocellular carcinoma (LIHC).
Figure 3Kaplan–Meier (KM) curves for low (blue) and high (red) risk groups under models A1 and A2. (a,b) for LUAD: Gene HNRNPK as well as selected imaging features (A1), and only selected imaging features (A2). (c,d) for LIHC: Gene GOT2 as well as selected imaging features (A1), and only selected imaging features (A2). p values are computed from log rank tests.
Identified histopathological features.
| LUAD | LIHC | ||
|---|---|---|---|
| Feature Name | Adjusted | Feature Name | Adjusted |
| Mean_Identifyeosinprimarycytoplasm_Texture_Correlation_maskosingray_3_00 | 1.16 × 10−4 | StDev_Identifyhemasub2_Texture_DifferenceEntropy_ImageAfterMath_3_02 | 9.46 × 10−6 |
| Median_Identifyeosinprimarycytoplasm_Texture_Correlation_maskosingray_3_00 | 1.59 × 10−4 | StDev_Identifyhemasub2_Texture_SumEntropy_ImageAfterMath_3_00 | 9.46 × 10−6 |
| StDev_Identifyeosinprimarycytoplasm_Texture_Correlation_maskosingray_3_00 | 1.59 × 10−4 | StDev_Identifyhemasub2_Texture_SumEntropy_ImageAfterMath_3_02 | 1.85 × 10−5 |
| StDev_Identifyhemasub2_AreaShape_Orientation | 1.59 × 10−4 | StDev_Identifyhemasub2_Texture_DifferenceEntropy_ImageAfterMath_3_00 | 2.92 × 10−5 |
| StDev_Identifyhemasub2_AreaShape_Zernike_6_6 | 1.05 × 10−4 | StDev_Identifyhemasub2_Texture_SumEntropy_ImageAfterMath_3_01 | 3.64 × 10−5 |
| StDev_Identifyhemasub2_AreaShape_Zernike_9_1 | 1.59 × 10−4 | StDev_Identifyhemasub2_Texture_DifferenceEntropy_ImageAfterMath_3_01 | 4.08 × 10−5 |
| StDev_Identifyhemasub2_AreaShape_Zernike_9_9 | 1.59 × 10−4 | StDev_Identifyhemasub2_Texture_DifferenceEntropy_ImageAfterMath_3_03 | 4.82 × 10−5 |
| StDev_Identifyhemasub2_Texture_DifferenceEntropy_ImageAfterMath_3_03 | 1.64 × 10−4 | StDev_Identifyhemasub2_Texture_SumEntropy_ImageAfterMath_3_03 | 9.24 × 10−5 |
| StDev_Identifyhemasub2_Texture_SumEntropy_ImageAfterMath_3_01 | 1.64 × 10−4 | Granularity_2_ImageAfterMath | 1.07 × 10−4 |
| Texture_Correlation_maskosingray_3_00 | 1.59 × 10−4 | ||
| Granularity_15_ImageAfterMath | 7.66 × 10−4 | ||
Figure 4KM curves for low (blue) and high (red) risk groups under models B1 and B2. (a,b) for LUAD: Imaging feature Texture_Correlation_maskosingray_3_00 as well as selected gene expressions (B1), and only selected gene expressions (B2). (c,d) for LIHC: Imaging feature StDev_Identifyhemasub2_Texture_DifferenceEntropy_ImageAfterMath_3_00 as well as selected gene expressions (B1), and only selected gene expressions (B2). p values are computed from log rank tests.