Evaluating the Risk of Inguinal Lymph Node Metastases before Surgery Using the Morphonode Predictive Model: A Prospective Diagnostic Study in Vulvar Cancer Patients.
Simona Maria FragomeniFrancesca MoroFernando PalluzziFloriana MasciliniVittoria RufiniAngela CollarinoFrediano InzaniLuciano GiacòGiovanni ScambiaAntonia Carla TestaGiorgia GarganesePublished in: Cancers (2023)
Ultrasound examination is an accurate method in the preoperative evaluation of the inguinofemoral lymph nodes when performed by experienced operators. The purpose of the study was to build a robust, multi-modular model based on machine learning to discriminate between metastatic and non-metastatic inguinal lymph nodes in patients with vulvar cancer. One hundred and twenty-seven women were selected at our center from March 2017 to April 2020, and 237 inguinal regions were analyzed (75 were metastatic and 162 were non-metastatic at histology). Ultrasound was performed before surgery by experienced examiners. Ultrasound features were defined according to previous studies and collected prospectively. Fourteen informative features were used to train and test the machine to obtain a diagnostic model (Morphonode Predictive Model). The following data classifiers were integrated: (I) random forest classifiers (RCF), (II) regression binomial model (RBM), (III) decisional tree (DT), and (IV) similarity profiling (SP). RFC predicted metastatic/non-metastatic lymph nodes with an accuracy of 93.3% and a negative predictive value of 97.1%. DT identified four specific signatures correlated with the risk of metastases and the point risk of each signature was 100%, 81%, 16% and 4%, respectively. The Morphonode Predictive Model could be easily integrated into the clinical routine for preoperative stratification of vulvar cancer patients.
Keyphrases
- lymph node
- squamous cell carcinoma
- small cell lung cancer
- sentinel lymph node
- machine learning
- magnetic resonance imaging
- minimally invasive
- neoadjuvant chemotherapy
- early stage
- radiation therapy
- climate change
- radical prostatectomy
- acute coronary syndrome
- gene expression
- coronary artery bypass
- metabolic syndrome
- papillary thyroid
- young adults
- electronic health record
- lymph node metastasis