Abstract 286P
Background
Recurrent tumors on MRI described as intermediate T2 signal intensity and ADC quantitative values derived from diffusion sequences are prone to discrepancy. In post surgical setting of oral cavity ADC values are prone to artifacts limiting its utility. This investigation aims to build a decision model using quantitative robust parameters derived from MR imaging.
Methods
Four lesion quantitative parameters ( quantitative T2 lesion signal, T2 lesion/muscle signal ratio, T2 lesion /Tongue signal ratio and ADC values) were assessed in 68 lesions (54 malignant,14 benign). Classification analysis was performed using L1 regularization of features in a Logistic regression, Statistical feature selection methods like ANOVA f-value and chi square and lastly a Entropy based feature selection using decision tree. Results include the probability for malignancy for every descriptor combination in the classification tree. Area under the curve (AUC) used as the statistical parameters to find model efficiency was calculated using software "R".
Results
Logistic regression based classifier could predict the probability of cancer based on T2 based features alone. ADC was not found helpful in predicting the disease. Both scores obtained from ANOVA and Chi-square have a different assumptions about distributions of input feature values and output probabilities, but yielded different scores. Both methods point to T2 as most significant in predicting output probabilities of cancer. Lastly, the decision tree showed T2 based features in addition to ADC provide maximum diagnostic value in determining cancer in patients. The area under the curve of the ROC was .940 for additive T2 and ADC and only 0.74 for ADC values alone. The signal ratios (T2 lesion/muscle signal ratio and T2 lesion /Tongue signal ratio) have an AUC 0.96.
Conclusions
Though each method of feature selection has certain shortfalls due to the assumptions but results demonstrate T2 feature outranking all others, indicating its high predictive power in determining the probability of disease. It is therefore possible to train predictive robust models based on T2 quantitative features with high level of accuracy and precision.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
51P - Real world outcomes in elderly women with HER2-positive advanced breast cancer
Presenter: Nicole Evans
Session: e-Poster Display Session
52P - Chemotherapy selection in routine clinical practice in Japan for HER2-negative advanced or metastatic breast cancer (KBCRN A001: E-SPEC Study)
Presenter: Yookija Kang
Session: e-Poster Display Session
53P - Aromatase inhibitor and cyclin-dependent kinase 4/6 inhibitor treated HR+/HER2- metastatic breast cancer differ to those treated with Aromatase inhibitors alone on progression
Presenter: Indunil Weerasena
Session: e-Poster Display Session
54P - Platinum-based chemotherapy in advanced breast cancer (ABC): Real-world outcome from a tertiary cancer centre in India
Presenter: Indhuja Vijesh
Session: e-Poster Display Session
55P - Eribulin in heavily pretreated metastatic breast cancer: A real-world data from India
Presenter: Tanmoy Mandal
Session: e-Poster Display Session
56P - Treatment of palbociclib in hormone receptor-positive breast cancer in China: A real-world study
Presenter: Yiqi Yang
Session: e-Poster Display Session
57P - Therapeutic vulnerability of malignant phyllodes tumour to pazopanib identified through a novel patient-derived xenograft and cell line model
Presenter: Dave Ng
Session: e-Poster Display Session
58P - Survival benefit of local treatments in breast cancer with lung metastasis: Results from a large retrospective study
Presenter: Yimeng Chen
Session: e-Poster Display Session
59P - The impact of site of metastasis on overall survival in indigenous and non-indigenous patients of Western Australia with breast cancer
Presenter: Azim Khan
Session: e-Poster Display Session
60P - Risk factors of bone metastasis and skeletal-related events in high-risk breast cancer patients
Presenter: Sumadi Lukman Anwar
Session: e-Poster Display Session