Positron emission tomography (PET) using uorodeoxyglucose (18F-FDG) is commonly used in the assessment of breast lesions by computing voxel-wise standardized uptake value (SUV) maps. Simple metrics derived from ensemble properties of SUVs within each identified breast lesion are routinely used for disease diagnosis. The maximum SUV within the lesion (SUVmax) is the most popular of these metrics. However these simple metrics are known to be error-prone and are susceptible to image noise. Finding reliable SUV map-based features that correlate to established molecular phenotypes of breast cancer (viz. estrogen receptor (ER), progesterone receptor (PR) and human epidermal growth factor receptor 2 (HER2) expression) will enable non-invasive disease management. This study investigated 36 SUV features based on first and second order statistics, local histograms and texture of segmented lesions to predict ER and PR expression in 51 breast cancer patients. True ER and PR expression was obtained via immunohistochemistry (IHC) of tissue samples from each lesion. A supervised learning, adaptive boosting-support vector machine (AdaBoost-SVM), framework was used to select a subset of features to classify breast lesions into distinct phenotypes. Performance of the trained multi-feature classifier was compared against the baseline single-feature SUVmax classifier using receiver operating characteristic (ROC) curves. Results show that texture features encoding local lesion homogeneity extracted from gray-level co-occurrence matrices are the strongest discriminator of lesion ER expression. In particular, classifiers including these features increased prediction accuracy from 0.75 (baseline) to 0.82 and the area under the ROC curve from 0.64 (baseline) to 0.75.
[1]
Jacob D. Furst,et al.
RUN-LENGTH ENCODING FOR VOLUMETRIC TEXTURE
,
2004
.
[2]
A. Elster,et al.
Recommendations on the Use of 18F-FDG PET in Oncology
,
2009
.
[3]
Demetri Terzopoulos,et al.
Snakes: Active contour models
,
2004,
International Journal of Computer Vision.
[4]
Lei Wang,et al.
A study of AdaBoost with SVM based weak learners
,
2005,
Proceedings. 2005 IEEE International Joint Conference on Neural Networks, 2005..
[5]
P. Lal,et al.
Correlation of HER-2 status with estrogen and progesterone receptors and histologic features in 3,655 invasive breast carcinomas.
,
2005,
American journal of clinical pathology.
[6]
M. Schwaiger,et al.
Glucose metabolism of breast cancer assessed by 18F-FDG PET: histologic and immunohistochemical tissue analysis.
,
2001,
Journal of nuclear medicine : official publication, Society of Nuclear Medicine.
[7]
G Lucignani,et al.
The use of standardized uptake values for assessing FDG uptake with PET in oncology: a clinical perspective
,
2004,
Nuclear medicine communications.
[8]
Robert M. Haralick,et al.
Textural Features for Image Classification
,
1973,
IEEE Trans. Syst. Man Cybern..
[9]
M. Soussan,et al.
Relationship between Tumor Heterogeneity Measured on FDG-PET/CT and Pathological Prognostic Factors in Invasive Breast Cancer
,
2014,
PloS one.