| Literature DB >> 33947428 |
Zixing Wang1, Ning Li1, Fuling Zheng2, Xin Sui2, Wei Han1, Fang Xue1, Xiaoli Xu2,3, Cuihong Yang1, Yaoda Hu1, Lei Wang1, Wei Song4, Jingmei Jiang5.
Abstract
BACKGROUND: The timeliness of diagnostic testing after positive screening remains suboptimal because of limited evidence and methodology, leading to delayed diagnosis of lung cancer and over-examination. We propose a radiomics approach to assist with planning of the diagnostic testing interval in lung cancer screening.Entities:
Keywords: Follow-up; Lung cancer screening; Pulmonary nodule management; Radiomics biomarker; Time-dependent analysis
Year: 2021 PMID: 33947428 PMCID: PMC8094528 DOI: 10.1186/s12967-021-02849-8
Source DB: PubMed Journal: J Transl Med ISSN: 1479-5876 Impact factor: 5.531
Characteristics of Study Participants and Pulmonary Nodules at Baseline
| Characteristics | Lung cancer (n = 61) | Cancer-free (n = 31) | |
|---|---|---|---|
| Age (year), mean ± SD | 58.1 ± 10.1 | 55.7 ± 10.8 | 0.276 |
| Sex, n (%) | |||
| Man | 15 (24.6) | 12 (38.7) | 0.226 |
| Woman | 46 (75.4) | 19 (61.3) | |
| Smoking status, n (%)a | |||
| Currently smoke | 3 (4.9) | 2 (6.5) | 0.847 |
| Quit smoke | 2 (3.3) | 0 (0.0) | |
| Never smoke | 56 (91.8) | 29 (93.6) | |
| Cancer history, n (%) | |||
| Personal | 8 (13.1) | 1 (3.2) | 0.264 |
| Family | 1 (1.6) | 0 (0.0) | > .999 |
| No. of screening, n (%) | |||
| 1 | 33 (54.1) | 25 (80.7) | 0.033 |
| 2 | 22 (36.1) | 4 (12.9) | |
| ≥ 3 | 6 (9.8) | 2 (6.5) | |
| Nodule location, n (%) | |||
| Left upper lobe | 19 (31.2) | 8 (25.8) | 0.024 |
| Left lower lobe | 6 (9.8) | 10 (32.3) | |
| Right upper lobe | 29 (47.5) | 7 (22.6) | |
| Right middle lobe | 1 (1.6) | 1 (3.2) | |
| Right lower lobe | 6 (9.8) | 5 (16.1) | |
| Diameter (mm) | |||
| < 6 | 2 (3.3) | 0 (0.0) | 0.807 |
| 6 ~ | 3 (4.9) | 1 (3.2) | |
| 8 ~ | 8 (13.1) | 7 (22.6) | |
| 10 ~ | 27 (44.3) | 12 (38.7) | |
| 15 ~ | 12 (19.7) | 5 (16.1) | |
| 20 ~ | 9 (14.8) | 6 (19.4) | |
| Nodule type | |||
| Solid | 4 (6.6) | 11 (35.5) | < 0.001 |
| Part-solid | 42 (68.9) | 18 (58.1) | |
| Non-solid | 15 (24.6) | 2 (6.5) | |
| Other semantic phenotype | |||
| Lobular | 35 (57.4) | 20 (64.5) | 0.653 |
| Spiculated | 20 (32.8) | 7 (22.6) | 0.344 |
| Juxtapleural | 9 (14.8) | 10 (32.3) | 0.061 |
| Pleural tag | 10 (16.4) | 2 (6.5) | 0.326 |
In cases in which more than one pulmonary nodule was present, data on nodule characteristics are shown for the one that had the greatest area in the transaxial plane
aCurrent smoker defined as ≥ 10 pack-years; quit smoking defined as ≥ 5 years’ cessation
Fig. 1Radiomic feature selection. Performed in a training set (67% of the participants). Max and min {AUCt} denote the maximum and minimum values of the time-dependent area under curve, respectively, across 12 time cutoffs ranging 1–12 months (defined as 30.5–366 days). max{AUCt} ≥ 0.7 indicates high predictive accuracy of lung cancer, and min {AUCt} ≥ 0.6 indicates stable predictive accuracy over time. ICC denotes the intraclass coefficient between feature values extracted from the original images and those extracted from noised images. ICC < 0.8 indicates non-robustness of the radiomic feature. *The 17 features were categorized into 6 groups, within which the features are highly correlated (pairwise Spearman r > 0.80). VIF denotes the variance inflation factor. VIF < 10 indicates a lack of collinearity between the finally selected features (i.e., that they are independent characterizations of the nodule)
Fig. 2Potential value of a radiomic feature for interpreting CT images in lung cancer screening. LongHEM: long-run high gray-level emphasis mean. In (a), the distributions of LongHEM was compared between nodules with different types. In (b), the status of the nodules was classified by the end of the study. In (c), the regression slope is 0.610 vs. 0.034 increase per log[day] for the relative change in LongHEM vs. diameter. One influential data point (1.71, 21.52) for the temporal change in LongHEM is not shown, which corresponds to a relative change of 21.52 in LongHEM in 51 days from baseline to the first repeat screen in a patient finally diagnosed with lung adenocarcinoma. In (d), the temporal changes of LongHEM and diameter of a malignant nodule were compared
Fig. 3Time-dependent performance of a radiomics biomarker in training and test datasets. The training and test datasets had 62 and the 30 observations, respectively. AUCt (95% CI), time-dependent area under the curve (95% confidence interval)
Fig. 4Distribution of lung cancer diagnosis time in subgroups of patients with nodules stratified by a radiomic biomarker
Benchmark of Proposed Nodule Management Schedule against Existing Protocols
| Recommendations | No. of participants (%, by column) | Lung Cancer diagnosed | Cancer-free | ||
|---|---|---|---|---|---|
| within 3 mos (n = 31) | within 3–12 mos (n = 20) | after 12 mos (n = 10) | by study end (n = 31) | ||
| AATS guideline, 2012 | |||||
| Diagnostic workup | 13 (14.1) | 3 (9.7) | 0 (0.0) | 1 (10.0) | 9 (29.0) |
| Follow-up in 3 mos | 2 (2.2) | 0 (0.0) | 0 (0.0) | 0 (0.0) | 2 (6.5) |
| Follow-up in 3–6 mos | 52 (56.5) | 21 (67.7) | 15 (75.0) | 4 (40.0) | 12 (38.7) |
| Follow-up in 6 mos | 25 (27.2) | 7 (22.6) | 5 (25.0) | 5 (50.0) | 8 (25.8) |
| ACCP Guideline, 2013 | |||||
| Diagnostic workup | 1 (1.1) | 0 (0.0) | 0 (0.0) | 0 (0.0) | 1 (3.2) |
| Follow-up at 3 mos | 72 (78.2) | 23 (74.2) | 15 (75.0) | 8 (80.0) | 26 (83.9) |
| Follow-up in 6–12 mos | 2 (2.2) | 0 (0.0) | 0 (0.0) | 0 (0.0) | 2 (6.5) |
| Annual screen | 16 (17.4) | 8 (25.8) | 5 (25.0) | 1 (10.0) | 2 (6.5) |
| No further evaluation | 1 (1.1) | 0 (0.0) | 0 (0.0) | 1 (10.0) | 0 (0.0) |
| China Guideline, 2018 | |||||
| Follow-up after 1 mosa | 32 (34.8) | 15 (48.4) | 6 (30.0) | 0 (0.0) | 11 (35.5) |
| Follow-up after 3 mos | 56 (60.9) | 15 (48.4) | 13 (65.0) | 9 (90.0) | 19 (61.3) |
| Annual screen | 4 (4.3) | 1 (3.2) | 1 (5.0) | 1 (10.0) | 1 (3.2) |
| Lung-RADS, 2019 or NCCN Guideline, 2020b | |||||
| Diagnostic workup | 42 (45.7) | 16 (51.6) | 7 (35.0) | 1 (10.0) | 18 (58.1) |
| Follow-up in 3 mos | 14 (15.2) | 0 (0.0) | 3 (15.0) | 2 (20.0) | 9 (29.0) |
| Follow-up in 6 mos | 18 (19.6) | 7 (22.6) | 5 (25.0) | 4 (40.0) | 2 (6.5) |
| Annual screen | 18 (19.6) | 8 (25.8) | 5 (25.0) | 3 (30.0) | 2 (6.5) |
| Proposed radiomics approach | |||||
| Diagnostic workup | 26 (28.3) | 19 (61.3) | 6 (30.0) | 1 (10.0) | 0 (0.0) |
| Follow-up in 3 mos | 42 (45.7) | 11 (35.5) | 14 (70.0) | 9 (90.0) | 8 (25.8) |
| Annual screen | 24 (26.1) | 1 (3.2) | 0 (0.0) | 0 (0.0) | 23 (74.2) |
AATS: American Association for Thoracic Surgery; ACCP: American College of Chest Physicians; Lung-RADS: Lung CT Screening Reporting & Data System; NCCN: National Comprehensive Cancer Network
aAfter tentative anti-inflammatory therapy
bLung-RADS (baseline screening) and NCCN guidelines have only small differences regarding management of perifissural nodules and the diameter criteria for different follow-up timings among non-solid nodules, which did not result in a difference in terms of nodule management with our data