Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Rationale And Objectives: To construct a predictive model for benign and malignant peripheral pulmonary lesions (PPLs) using a random forest algorithm based on grayscale ultrasound and ultrasound contrast, and to evaluate its diagnostic value.

Materials And Methods: We selected 254 patients with PPLs detected using chest lung computed tomography between October 2021 and July 2023, including 161 malignant and 93 benign lesions. Relevant variables for judging benign and malignant PPLs were screened using logistic regression analysis. A model was constructed using the random forest algorithm, and the test set was verified. Correlations between these relevant variables and the diagnosis of benign and malignant PPLs were evaluated.

Results: Age, lesion shape, size, angle between the lesion border and chest wall, boundary clarity, edge regularity, air bronchogram, vascular signs, enhancement patterns, enhancement intensity, homogeneity of enhancement, number of non-enhancing regions, non-enhancing region type, arrival time (AT) of the lesion, lesion-lung AT difference, AT difference ratio, and time to peak were the relevant variables for judging benign and malignant PPLs. Consequently, a model and receiver operating characteristic curve were constructed with an AUC of 0.92 and an accuracy of 88.2%. The test set results showed that the model had good predictive ability. The index with the highest correlation for judging benign and malignant PPLs was the AT difference ratio. Other important factors were lesion size, patient age, and lesion morphology.

Conclusion: The random forest algorithm model constructed based on clinical data and ultrasound imaging features has clinical application value for predicting benign and malignant PPLs.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10961397PMC
http://dx.doi.org/10.3389/fonc.2024.1352028DOI Listing

Publication Analysis

Top Keywords

benign malignant
28
malignant ppls
20
random forest
16
forest algorithm
16
model constructed
12
relevant variables
12
judging benign
12
diagnosis benign
8
malignant
8
malignant peripheral
8

Similar Publications

Background: Bone marrow (BM) lesion differentiation remains challenging, and quantitative magnetic resonance imaging (MRI) may enhance accuracy over conventional methods. We evaluated the diagnostic value and inter-reader reliability of Dixon-based signal drop (%drop) and fat fraction percentage (%fat) as adjuncts to existing protocols.

Materials And Methods: In this prospective two-center study, 172 patients with BM signal abnormalities underwent standardized 1.

View Article and Find Full Text PDF

Background: Staging laparoscopy (SL) is an essential procedure for peritoneal metastasis (PM) detection. Although surgeons are expected to differentiate between benign and malignant lesions intraoperatively, this task remains difficult and error-prone. The aim of this study was to develop a novel multimodal machine learning (MML) model to differentiate PM from benign lesions by integrating morphologic characteristics with intraoperative SL images.

View Article and Find Full Text PDF

Background: Enucleation has the advantages of preserving function and avoiding pancreaticoduodenectomy for benign and low-grade malignant neoplasms in the pancreatic head. However, laparoscopic enucleation (LEn) of pancreatic head tumors remains challenging in terms of bleeding control and duct integrity preservation because of the complicated blood supply to the pancreatic head and the adjacent relationships of lesions with the main pancreatic duct (MPD), especially for deep-seated or broad-based lesions. Here, we developed a novel dual-arterial occlusion technique to facilitate LEn of pancreatic head tumors and evaluated its feasibility and safety.

View Article and Find Full Text PDF

No consensus was made on whether all Nevus sebaceous (NS) should undergo prophylactic excision and the best age of surgery. This is a retrospective study. Patients who underwent surgery and were confirmed as NS by pathology during January 2014 to December 2023 in the Department of Dermatology of Xinhua hospital were included in this study.

View Article and Find Full Text PDF

Background: Ovarian cancer (OC) remains the most lethal gynecological malignancy, largely due to its late-stage diagnosis and nonspecific early symptoms. Advances in biomarker identification and machine learning offer promising avenues for improving early detection and prognosis. This review evaluates the role of biomarker-driven ML models in enhancing the early detection, risk stratification, and treatment planning of OC.

View Article and Find Full Text PDF