Comprehensive diagnostic model for osteosarcoma classification using CT imaging features

IF 3.4 2区 医学 Q2 Medicine
Yiran Wang , Zhixiang Wang , Bin Zhang , Fan Yang
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引用次数: 0

Abstract

Objective

The main objective of this study was to create and assess a detailed diagnostic model with an optimizing feature selection algorithm that combines computed tomography (CT) imaging characteristics, demographic information, and genetic markers to enhance the accuracy of benign and malignant classification of osteosarcoma. This research seeks to enhance the early identification and categorization of benign and malignant of osteosarcoma, ultimately enabling more personalized and efficient treatment approaches.

Methods

Data from 225 patients diagnosed with osteosarcoma at two different medical institutions between June 2018 and June 2021 were gathered for this research study. A novel feature selection approach that combined Principal Component Analysis (PCA) with Improved Particle Swarm Optimization (IPSO) was utilized to analyze 1743 image-derived features. The performance of the resulting model was evaluated using metrics such as area under the receiver operating characteristic curve (AUC), accuracy (ACC), sensitivity (SEN), and specificity (SPE), and compared to models developed using conventional feature selection methods.

Results

The proposed model showed promising predictive performance with an AUC of 0.87, accuracy of 0.80, sensitivity of 0.75, and specificity of 0.85. These results suggest improved predictive ability compared to models built using traditional feature selection techniques, particularly in terms of accuracy and specificity. However, there is room for improvement in enhancing sensitivity.

Conclusion

Our study introduces a novel predictive model for distinguishing between benign and malignant osteosarcoma., emphasizing its potential significance in clinical practice. Through the utilization of CT imaging features, our model shows improved accuracy and specificity, marking progress in the early detection and classification of osteosarcoma as either benign or malignant. Future investigations will concentrate on enhancing the model’s sensitivity and validating its effectiveness on a larger dataset, aiming to boost its clinical relevance and support personalized treatment approaches for osteosarcoma.

利用 CT 成像特征进行骨肉瘤分类的综合诊断模型
目的本研究的主要目的是创建并评估一个详细的诊断模型,该模型采用优化特征选择算法,结合了计算机断层扫描(CT)成像特征、人口统计学信息和遗传标记,以提高骨肉瘤良恶性分类的准确性。这项研究旨在加强对骨肉瘤良恶性的早期识别和分类,最终实现更个性化、更高效的治疗方法。方法本研究收集了2018年6月至2021年6月期间在两家不同医疗机构确诊的225名骨肉瘤患者的数据。研究采用了一种结合主成分分析(PCA)和改进型粒子群优化(IPSO)的新型特征选择方法来分析 1743 个图像衍生特征。使用接收者工作特征曲线下面积(AUC)、准确性(ACC)、灵敏度(SEN)和特异性(SPE)等指标对所建立模型的性能进行了评估,并与使用传统特征选择方法建立的模型进行了比较。结果所提出的模型显示出良好的预测性能,AUC 为 0.87,准确性为 0.80,灵敏度为 0.75,特异性为 0.85。这些结果表明,与使用传统特征选择技术建立的模型相比,预测能力有所提高,尤其是在准确性和特异性方面。结论我们的研究介绍了一种区分良性和恶性骨肉瘤的新型预测模型,强调了该模型在临床实践中的潜在意义。通过利用 CT 成像特征,我们的模型显示出更高的准确性和特异性,这标志着我们在早期检测骨肉瘤并将其分为良性和恶性方面取得了进展。未来的研究将集中于提高模型的灵敏度,并在更大的数据集上验证其有效性,以提高其临床相关性,支持骨肉瘤的个性化治疗方法。
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来源期刊
CiteScore
7.20
自引率
2.90%
发文量
50
审稿时长
34 days
期刊介绍: The Journal of Bone Oncology is a peer-reviewed international journal aimed at presenting basic, translational and clinical high-quality research related to bone and cancer. As the first journal dedicated to cancer induced bone diseases, JBO welcomes original research articles, review articles, editorials and opinion pieces. Case reports will only be considered in exceptional circumstances and only when accompanied by a comprehensive review of the subject. The areas covered by the journal include: Bone metastases (pathophysiology, epidemiology, diagnostics, clinical features, prevention, treatment) Preclinical models of metastasis Bone microenvironment in cancer (stem cell, bone cell and cancer interactions) Bone targeted therapy (pharmacology, therapeutic targets, drug development, clinical trials, side-effects, outcome research, health economics) Cancer treatment induced bone loss (epidemiology, pathophysiology, prevention and management) Bone imaging (clinical and animal, skeletal interventional radiology) Bone biomarkers (clinical and translational applications) Radiotherapy and radio-isotopes Skeletal complications Bone pain (mechanisms and management) Orthopaedic cancer surgery Primary bone tumours Clinical guidelines Multidisciplinary care Keywords: bisphosphonate, bone, breast cancer, cancer, CTIBL, denosumab, metastasis, myeloma, osteoblast, osteoclast, osteooncology, osteo-oncology, prostate cancer, skeleton, tumour.
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