The conventional magnetic resonance imaging (MRI) evaluation and staging of cervical cancer encounters several pitfalls, partially due to subjective evaluations of medical images. Fifty-six patients with histologically proven cervical malignancies (squamous cell carcinomas, n = 42; adenocarcinomas, n = 14) who underwent pre-treatment MRI examinations were retrospectively included. The lymph node status (non-metastatic lymph nodes, n = 39; metastatic lymph nodes, n = 17) was assessed using pathological and imaging findings. The texture analysis of primary tumours and lymph nodes was performed on T2-weighted images. Texture parameters with the highest ability to discriminate between the two histological types of primary tumours and metastatic and non-metastatic lymph nodes were selected based on Fisher coefficients (cut-off value > 3). The parameters' discriminative ability was tested using an k nearest neighbour (KNN) classifier, and by comparing their absolute values through an univariate and receiver operating characteristic analysis. Results: The KNN classified metastatic and non-metastatic lymph nodes with 93.75% accuracy. Ten entropy variations were able to identify metastatic lymph nodes (sensitivity: 79.17-88%; specificity: 93.48-97.83%). No parameters exceeded the cut-off value when differentiating between histopathological entities. In conclusion, texture analysis can offer a superior non-invasive characterization of lymph node status, which can improve the staging accuracy of cervical cancers.
Texture Analysis in Uterine Cervix Carcinoma: Primary Tumour and Lymph Node Assessment.
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作者:Ètefan Paul-Andrei, CoÈe Adrian, Csutak Csaba, Lupean Roxana-Adelina, Lebovici Andrei, Mihu Carmen Mihaela, Lenghel Lavinia Manuela, PuÈcas Marius Emil, Roman Andrei, Feier Diana
| 期刊: | Diagnostics | 影响因子: | 3.300 |
| 时间: | 2023 | 起止号: | 2023 Jan 26; 13(3):442 |
| doi: | 10.3390/diagnostics13030442 | ||
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