| Literature DB >> 31489116 |
Ivan S Grebenshchikov1, Valentin A Ustinov1, Artem E Studennikov1, Vadim I Ivanov2, Natalia V Ivanova2, Victor A Titov3, Natalja E Vergbickaya3.
Abstract
Evaluation of epidemiologic risk factor in relation to lung cancer invoked by polycyclic aromatic hydrocarbons has been inconsistent. To address this issue, we conducted a prospective evaluation of new biomarkers for lung cancer classified according levels of idiotypic and anti-idiotypic antibodies against polycyclic aromatic hydrocarbons in human blood serum. The blood serums of 557 lung cancer patients and 227 healthy donors were analysis of these antibodies by ELISA. Collected data were regrouped and analyzed by gender, smoking, and age as predictors of risk lung cancer factors. Also, the data of lung cancer patients were additionally analyzed by stages and types of lung cancer, surgery, and chemotherapy. It was suggested to use ratio of idiotypic and anti-idiotypic antibodies rather than distinguish level each of them separately. The ratio of levels in healthy people was 3.32 times higher than in lung cancer patients. This approach gave more precisely results and great prognostic value. The logistic regression model (AUC = 0.9) and neural networks (AUC = 0.95) were built to compare lung cancer patients and healthy donors by predictors. The ELISA data of 49 people random sampled from the originally ELISA data and ELISA data of 52 coal miners as a group of lung cancer risk were confirmed logistic regression model. So, suggested idiotypic and anti-idiotypic antibodies against polycyclic aromatic hydrocarbons were not only shown difference between healthy donors and lung cancer patients also elicited group of lung cancer risk among healthy people.Entities:
Keywords: anti-idiotypic antibodies; benzo[a]pyrene; idiotypic antibodies; lung cancer; polycyclic aromatic hydrocarbon
Year: 2019 PMID: 31489116 PMCID: PMC6707943 DOI: 10.18632/oncotarget.27126
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Levels of the idiotypic and anti-idiotypic antibodies against PAHs in blood serum of healthy people and lung cancer patients.
(A) Box-plots of Ab1 (grey) and Ab2 (white) levels in blood serum of healthy people and lung cancer patients. The scale on the ordinate is levels of Ab1 and Ab2 (see Materials and methods). The values of medians are indicated. (B) Ratio of Ab2/Ab1 levels for healthy people (white) and lung cancer patients (black). Values are presented as the means ± S.E.
Figure 2Analysis of amount cases in breakdown groups.
The break downing by gender, non-smokers (open bars), and smokers (solid bars) for healthy donors and lung cancer patients (A). Analysis of amount cases for lung cancer patients in groups breakdown by gender, lung cancer stages according TNM (I, II, III, and IV), and type of lung cancer: small-cell lung cancer (solid bars), non-small-cell lung cancer (grey bars), and adenocarcinoma (open bars) (B).
ELISA data analysis of healthy donors and lung cancer patients’ based on Ab1 (A), Ab2 (B), and Ab2/Ab1 (C) levels using health, gender and smoking as predictors
| A | |||
|---|---|---|---|
| Groups | Healthy people, median value of Ab1 (P25:P75) | Lung cancer patients, median value of Ab1 (P25:P75) | Mann–Whitney U-test for data analysis between groups of healthy people and lung cancer patients, |
| 1. Men total | 2.1 (0.95:3.74) | 2.09 (0.96:3.78) | > 0.05 |
| 1.1. Men non-smokers | 2.13 (1.19:3.67) | 2.04 (0.97:3.86) | > 0.05 |
| 1.2. Men smokers | 2.07 (0.95:3.75) | 2.09 (0.96:3.76) | > 0.05 |
| 2. Women total | 0.86 (0.45:1.66) | 1.78 (0.78:3.1) | 0.001 |
| 2.1. Women non-smokers | 0.87 (0.48:1.85) | 1.56 (0.67:3.49) | 0.002 |
| 2.2. Women smokers | 0.66 (0.39:1.48) | 2.01 (0.84:3.02) | 0.001 |
Ab2/Ab1 was obtained by division of the Ab2 level value by Ab1 level value for each examined person (C). Amount of people in each groups in (A), (B), and (C) were the same like in Figure 2A.
ELISA data analysis of healthy donors and lung cancer patients’ groups based on Ab1 and Ab2 value levels considering smoking experience and the number of cigarettes smoked per day
| Health status | Smoking experience | Smoking intensity | Ab1 | Ab2 | |
|---|---|---|---|---|---|
| Ab1 | 0.75 | –0.3 | –0.3 | 1.0 | |
| Ab2 | 0.75 | –0.3 | –0.3 | 1.0 |
The result of logistic regression calculations
| Constant | Abl | Ab2 | Gender | Age | Smoking | |
|---|---|---|---|---|---|---|
|
| −6.40 | 0.06 | –0.11 | –0.69 | 0.2 | — |
|
| −4.71 | 0.07 | –0.11 | –0.14 | 0.15 | –1.69 |
Figure 3ROC curves for logistic regression and neural networks calculations including smoking predictor.
The average probability of health status in the groups of random sampled 49 people and 52 coal miners
| Groups of people | Healthy | Lung cancer |
|---|---|---|
| 49 randomly | Mean = 0.29 ± 0.037 | Mean = 0.85 ± 0.028 |
| selected people | SD = 0.21-0.38 | SD = 0.79-0.9 |
| 52 coal miners | Mean = 0.59 ± 0.037 | |
| SD = 0.52-0.67 | ||
SD was standard deviation.
Figure 4Borders of lung cancer risks in examined group of coal miners.
The borders of cancer risk prediction were from 0.0 as a negative symptom for healthy people till 1.0 as a positive symptom for lung cancer patients.