| Literature DB >> 34609496 |
Qi Huang1, Shaodong Wang2, Qingyun Li3, Peiyu Wang2, Jianfeng Li2, Shushi Meng2, Hang Li3, Hao Wu4, Yu Qi1, Xiangnan Li1, Yang Yang1, Song Zhao1, Mantang Qiu2.
Abstract
Importance: A triage test is needed to increase the detection rate for esophageal cancer. Objective: To investigate whether breathomics can detect esophageal cancer among patients without a previous diagnosis of cancer using high-pressure photon ionization time-of-flight mass spectrometry (HPPI-TOFMS). Design, Setting, and Participants: This diagnostic study included participants who planned to receive an upper endoscopy or surgery of the esophagus at a single center in China. Exhaled breath was collected with a self-designed collector and air bags before participants underwent these procedures. Sample collection and analyses were performed by trained researchers following a standardized protocol. Participants were randomly divided into a discovery data set and a validation data set. Data were collected from December 2020 to March 2021. Exposures: Breath samples were analyzed by HPPI-TOFMS, and the support vector machine algorithm was used to construct a detection model. Main Outcomes and Measures: The accuracy of breathomics was measured by the sensitivity, specificity, accuracy, positive predictive value, negative predictive value, and area under the receiver operating characteristic curve.Entities:
Mesh:
Year: 2021 PMID: 34609496 PMCID: PMC8493434 DOI: 10.1001/jamanetworkopen.2021.27042
Source DB: PubMed Journal: JAMA Netw Open ISSN: 2574-3805
Characteristics of 675 Participants
| Characteristic | Discovery data set | Validation data set | ||||
|---|---|---|---|---|---|---|
| Participants, No. (%) | Participants, No. (%) | |||||
| Benign (n = 367) | Cancer (n = 173) | Benign (n = 92) | Cancer (n = 43) | |||
| Age, mean (SD), y | 63.6 (13.0) | 65.1 (9.1) | .63 | 61.8 (13.5) | 67.2 (8.2) | .02 |
| Sex | ||||||
| Men | 257 (70.0) | 118 (68.2) | .76 | 65 (70.7) | 30 (69.8) | .53 |
| Women | 110 (30.0) | 55 (31.8) | 27 (29.3) | 13 (30.2) | ||
| BMI, mean (SD) | 23.1 (3.7) | 23.8 (3.0) | .008 | 23.1 (4.9) | 23.4 (2.3) | .98 |
| TNM stage | ||||||
| IA, IB | NA | 69 (39.9) | NA | NA | 12 (27.9) | NA |
| IIA, IIB | NA | 62 (35.8) | NA | 22 (51.2) | ||
| IIIA, IIIB, IIIC | NA | 33 (19.1) | NA | 6 (14.0) | ||
| IVA | NA | 9 (5.2) | NA | 3 (7.0) | ||
| Smoking | ||||||
| Current | 42 (11.4) | 26 (15.0) | .24 | 13 (14.1) | 6 (14.0) | .71 |
| Former | 55 (15.0) | 32 (18.5) | 16 (17.4) | 5 (11.6) | ||
| Never | 270 (73.6) | 115 (66.5) | 63 (68.5) | 32 (74.4) | ||
| Alcohol use | ||||||
| Current | 90 (24.5) | 52 (30.1) | .04 | 22 (23.9) | 16 (37.2) | .29 |
| Former | 36 (9.8) | 26 (15.0) | 15 (16.3) | 5 (11.6) | ||
| Never | 241 (65.7) | 95 (54.9) | 55 (59.8) | 22 (51.2) | ||
| Bad eating habits | 17 (4.6) | 17 (9.8) | .04 | 5 (5.4) | 0 (0.0) | .18 |
| Pulmonary disease | 26 (7.1) | 16 (9.2) | .39 | 8 (8.7) | 2 (4.7) | .50 |
| Diabetes | 41 (11.2) | 27 (15.6) | .17 | 13 (14.1) | 5 (11.6) | .79 |
| Cardiovascular disease | 66 (18.0) | 47 (27.2) | .02 | 20 (21.7) | 10 (23.3) | .50 |
| Liver disease | 13 (3.5) | 10 (5.8) | .26 | 1 (1.1) | 0 (0.0) | .68 |
| Kidney disease | 4 (1.1) | 4 (2.3) | .45 | 3 (3.3) | 1 (2.3) | .62 |
| PPI use | 51 (13.9) | 18 (10.4) | .27 | 10 (10.9) | 8 (18.6) | .28 |
| Statin use | 26 (7.1) | 17 (9.8) | .31 | 4 (4.3) | 2 (4.7) | .62 |
| Antihypertension medications | 51 (13.9) | 43 (24.9) | .002 | 24 (26.1) | 7 (16.3) | .27 |
| Diabetes medications | 34 (9.3) | 20 (11.6) | .44 | 12 (13.0) | 7 (16.3) | .79 |
| Aspirin | 29 (7.9) | 18 (10.4) | .41 | 4 (4.3) | 7 (16.3) | .04 |
Abbreviations: BMI, body mass index (calculated as weight in kilograms divided by height in meters squared); NA, not applicable; PPI, proton pump inhibitor.
Esophageal cancer and high-grade intraepithelial neoplasia were combined.
Bad eating habits defined as a preference for high-temperature food or pickled foods or eating too quickly.
Figure 1. Flowchart of Study Design and Representative Spectrum Peaks of Subgroups
HGIN indicates high-grade intraepithelial neoplasia; m/z, mass to charge ratio.
Figure 2. Area Under the Receiver Operating Characteristic Curve for Esophageal Cancer and the Detection Rate for High-Grade Intraepithelial Neoplasia (HGIN)
C, Twelve patients with HGIN were tested as having esophageal cancer. Samples with scores greater than 0 were classified as cancerous.
Multivariable Logistic Regression Analyses for 675 Participants
| Characteristic | OR (95% CI) | |
|---|---|---|
| Sex | 1.19 (0.54-2.61) | .67 |
| Age | 1.02 (0.98-1.06) | .35 |
| BMI | 1.02 (0.92-1.13) | .70 |
| Score of detection model | 81.85 (39.71-168.73) | <.001 |
| Smoking | 1.11 (0.68-1.79) | .70 |
| Alcohol use | 0.87 (0.55-1.37) | .54 |
| Bad eating habits | 1.02 (0.21-5.09) | .98 |
| Pulmonary disease | 0.98 (0.20-4.82) | .98 |
| Diabetes | 0.54 (0.18-1.58) | .26 |
| Cardiovascular disease | 0.53 (0.23-1.24) | .14 |
| Liver disease | 0.38 (0.05-2.62) | .32 |
| Kidney disease | 1.72 (0.10-28.44) | .71 |
| PPI use | 1.02 (0.34-3.04) | .97 |
| Statin use | 0.48 (0.14-1.65) | .25 |
| Antihypertensive medications | 0.38 (0.15-0.92) | .03 |
| Diabetes medications | 0.70 (0.23-2.16) | .54 |
| Aspirin | 0.18 (0.06-0.60) | .005 |
Abbreviations: BMI, body mass index; OR, odds ratio; PPI, proton pump inhibitor.
Esophageal cancer status as the dependent variable. Patients with high-grade intraepithelial neoplasia were not included in regression analyses.
Bad eating habits defined as a preference for high-temperature food or pickled foods or eating too quickly.