| Literature DB >> 33176885 |
Ran Guo1,2, Jian Guo1, Lichen Zhang1, Xiaoxia Qu1, Shuangfeng Dai3, Ruchen Peng4, Vincent F H Chong5, Junfang Xian6.
Abstract
BACKGROUND: Laryngeal and hypopharyngeal squamous cell carcinoma (LHSCC) with thyroid cartilage invasion are considered T4 and need total laryngectomy. However, the accuracy of preoperative diagnosis of thyroid cartilage invasion remains lower. Therefore, the purpose of this study was to assess the potential of computed tomography (CT)-based radiomics features in the prediction of thyroid cartilage invasion from LHSCC.Entities:
Keywords: Hypopharynx; Larynx; Radiomics; Squamous cell carcinoma; Thyroid cartilage
Year: 2020 PMID: 33176885 PMCID: PMC7661189 DOI: 10.1186/s40644-020-00359-2
Source DB: PubMed Journal: Cancer Imaging ISSN: 1470-7330 Impact factor: 3.909
Fig. 1Patient recruitment pathway
Fig. 2a Axial CE-CT image. Histopathology confirmed thyroid cartilage invasion in a 57-year-old man with supraglottic laryngeal carcinoma. Thyroid cartilage shows focal erosion (white arrow) that involves the inner cortex but do not penetrate the outer cortex, which is defined as minor invasion. b Axial CE-CT image for a 61-year-old man depicts a large tumor at the level of the glottic region that penetrates the right thyroid cartilage and presents as an extralaryngeal mass (white arrow) and thyroid cartilage is lysis, which was defined as major invasion
Fig. 3An example of manual segmentation in CE-CT image from a 65-year-old male patient with supraglottic laryngeal carcinoma. Red contour was drawn to contain the whole tumor region in one slice
Patient general characteristics and tumor staging
| General characteristics | With thyroid cartilage invasion | Without thyroid cartilage invasion | |
|---|---|---|---|
| Number | 86 | 179 | |
| Age(mean ± SD, years) | 59.7 ± 10.5 | 59.3 ± 9.4 | 0.263a |
| Gender | |||
| male | 80 (93.0%) | 173 (3.4%) | 0.184b |
| female | 6 (7.0%) | 6 (2.8%) | |
| Primary site | |||
| Supraglottis | 30 (34.9%) | 82 (45.8%) | 0.029b |
| Glottis | 49 (57.0%) | 69 (38.5%) | |
| Subglottis | 1 (1.1%) | 8 (4.5%) | |
| Hypopharynx | 6 (7.0%) | 20 (11.2%) | |
| T stage | |||
| T1 | 0 (0) | 25 (14.0%) | < 0.001b |
| T2 | 0 (0) | 67 (37.4%) | |
| T3 | 44 (51.2%) | 87 (48.6%) | |
| T4 | 42 (48.8%) | 0 (0) | |
| N stage | |||
| N0 | 60 (69.7%) | 117 (65.4%) | 0.717b |
| N1 | 14 (16.3%) | 28 (15.6%) | |
| N2 | 12 (14.0%) | 33 (18.4%) | |
| N3 | 0 (0) | 1 (0.6%) | |
SD standard deviation
P value < 0.05 is considered as a significant difference
aStudent’s t test
bChi-square test
Cross tabulation of thyroid cartilage invasion for LHSCC on CT versus histopathologic examination (cases)
| CT diagnosis | Histopathologic diagnosis | Total | |
|---|---|---|---|
| With thyroid cartilage invasion | Without thyroid cartilage invasion | ||
| With thyroid cartilage invasion | 64 | 54 | 118 |
| Without thyroid cartilage invasion | 22 | 125 | 147 |
| Total | 86 | 179 | 265 |
LHSCC Laryngeal and hypopharyngeal squamous cell carcinoma
The diagnostic performance of radiologist assessment, LR model, and LR-SVMSMOTE model in the prediction of thyroid cartilage invasion
| Radiologist | LR | LR-SVMSMOTE | |
|---|---|---|---|
| AUC(95%CI) | 0.721(0.663–0.774) | 0.876(0.830–0.913) | 0.905(0.863–0.937) |
| Sensitivity (%) | 74.4 | 80.2 | 80.2 |
| Specificity (%) | 69.8 | 83.8 | 88.3 |
| Accuracy (%) | 71.3 | 82.6 | 85.7 |
| Precision(%) | 0.542 | 0.704 | 0.767 |
| F1-score | 0.627 | 0.750 | 0.784 |
| Kappa | 0.404 | 0.618 | 0.677 |
| MCC | 0.417 | 0.621 | 0.677 |
| < 0.001a | < 0.001a |
LR Logistic regression, LR-SVMSMOTE Logistic regression - support vector machine-based synthetic minority oversampling, CI Confidence Interval, MCC Matthews Correlation Coefficient
aDelong test for differences in AUC compared to radiologist assessment
The selected feature sets with LASSO and LASSO with SVMSMOTE
| Selected Features | |
|---|---|
| LASSO ( | original_shape_LeastAxis |
| original_shape_Elongation | |
| original_shape_Flatness | |
| logarithm_firstorder_Kurtosis | |
| logarithm_glrlm_HighGrayLevelRunEmphasis | |
| square_firstorder_10Percentile | |
| square_glrlm_ShortRunHighGrayLevelEmphasis | |
| exponential_glcm_Imc1 | |
| exponential_glrlm_LongRunEmphasis | |
| exponential_glrlm_LongRunLowGrayLevelEmphasis | |
| wavelet-LHL_firstorder_Skewness | |
| wavelet-LHH_glcm_ClusterShade | |
| wavelet-HLL_firstorder_Energy | |
| wavelet-LLH_firstorder_Kurtosis | |
| wavelet-LLH_glcm_ClusterProminence | |
| wavelet-HHH_glszm_GrayLevelNonUniformity | |
| wavelet-HHH_glszm_LowGrayLevelZoneEmphasis | |
| wavelet-HHH_glszm_SmallAreaLowGrayLevelEmphasis | |
| wavelet-HHL_firstorder_Skewness | |
| wavelet-HHL_glrlm_ShortRunLowGrayLevelEmphasis | |
| wavelet-LLL_firstorder_Kurtosis | |
| wavelet-LLL_glcm_Correlation | |
| LASSO with SVMSMOTE ( | wavelet-HLL_firstorder_Energy |
| exponential_glrlm_LongRunEmphasis | |
| wavelet-HHL_firstorder_Skewness | |
| wavelet-HHL_glrlm_ShortRunLowGrayLevelEmphasis | |
| wavelet-HLH_glrlm_RunPercentage | |
| wavelet-LHL_firstorder_90Percentile | |
| square_glrlm_LongRunEmphasis | |
| logarithm_glrlm_ShortRunHighGrayLevelEmphasis | |
| wavelet-LHL_glcm_MaximumProbability | |
| wavelet-LLH_glszm_GrayLevelNonUniformity | |
| wavelet-LHL_firstorder_Mean | |
| wavelet-LHH_glcm_ClusterShade | |
| wavelet-LHL_glszm_ZonePercentage | |
| wavelet-HHL_glszm_GrayLevelVariance | |
| original_shape_Elongation | |
| wavelet-LLH_firstorder_10Percentile | |
| square_glcm_Correlation | |
| original_shape_Flatness | |
| wavelet-HHH_glszm_LowGrayLevelZoneEmphasis | |
| wavelet-LLL_glcm_Correlation | |
| exponential_glrlm_ShortRunHighGrayLevelEmphasis | |
| wavelet-LLL_firstorder_Kurtosis | |
| wavelet-LHL_firstorder_InterquartileRange | |
| wavelet-LLH_glcm_Contrast | |
| wavelet-LLH_firstorder_Energy | |
| wavelet-LLH_firstorder_Minimum | |
| wavelet-LHL_glszm_ZoneEntropy | |
| wavelet-HHH_glszm_GrayLevelNonUniformity | |
| original_glszm_ZoneEntropy | |
| original_shape_LeastAxis |
Each feature is denoted as Filter_FeatureGroup_FeatureName and ‘Original’ indicates the radiomics features extracted from the original images without preprocessing
Fig. 4a-b ROC curve for the LR model. c-d ROC curve for the LR-SVMSMOTE model
Fig. 5ROC curves for LR (orange) and LR-SVMSMOTE (green) models and radiologist assessment(blue) for the whole dataset to predict thyroid cartilage invasion from LHSCC