| Literature DB >> 32487085 |
Bin Zhang1,2, Zhouyang Lian3, Liming Zhong4, Xiao Zhang4,5, Yuhao Dong6, Qiuying Chen1,2, Lu Zhang1,2, Xiaokai Mo1, Wenhui Huang1, Wei Yang7, Shuixing Zhang8.
Abstract
BACKGROUND: Early radiation-induced temporal lobe injury (RTLI) diagnosis in nasopharyngeal carcinoma (NPC) is clinically challenging, and prediction models of RTLI are lacking. Hence, we aimed to develop radiomic models for early detection of RTLI.Entities:
Keywords: Machine learning; Magnetic resonance imaging; Nasopharyngeal carcinoma; Radiation-induced temporal lobe injury; Radiomics
Mesh:
Year: 2020 PMID: 32487085 PMCID: PMC7268644 DOI: 10.1186/s12885-020-06957-4
Source DB: PubMed Journal: BMC Cancer ISSN: 1471-2407 Impact factor: 4.430
Fig. 1The radiomic process mainly involves a) MR images acquired; b) MR image pre-processing, including (i) intensity normalization, (ii) skull stripping, and (iii) gray /− white matter separation from the medial temporal lobe; c) medial temporal lobe segmentation; d) radiomic feature extraction; e) radiomic feature selection; and f) radiomic analysis
Fig. 2All NPC patients underwent pre-treatment MR scans and then received radiotherapy. After radiotherapy, they underwent regular MRI follow-up to monitoring the treatment response. We developed three radiomic models, models 1, 2, and 3, to predict RTLI at the last 1, 2, and 3 MRI scans (N-1, N-2, and N-3) before MRI confirmation (defined as N) respectively
Basic characteristics of 242 patients
| Characteristics | |
|---|---|
| Sex | |
| Male | 171 (70.7%) |
| Female | 71 (29.3%) |
| Age (years) | 48.5 ± 10.4 |
| Overall stage | |
| I | 7 (2.9%) |
| II | 7 (2.9%) |
| III | 92 (38.0%) |
| IV | 136 (56.2%) |
| WHO type | |
| I | 0 (0%) |
| II | 23 (9.5%) |
| III | 219 (90.5%) |
| Latency (median, months) | 41 |
| Radiation dose (Gy) | 32 ± 5.39 |
| Chemotherapy | |
| Yes | 233 (96.3%) |
| No | 9 (3.7%) |
Fig. 3Comparison of AUCs among three prediction models using different combinations of radiomic features (n = 1, 5, 10, 15 and 20) in the testing cohort. a-c model 1 using features derived from medial temporal lobe, gray matter, and white matter respectively. d-f model 2 using features derived from medial temporal lobe, gray matter, and white matter respectively. g-i model 3 using features derived from medial temporal lobe, gray matter, and white matter respectively