Sat.Mar 16, 2024

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Diagnostic Imaging's Weekly Scan: March 10-March 16

Diagnostic Imaging

Catch up on the top radiology content of the past week.

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Added value of spectral CT quantitative parameters for differentiating tuberculosis-associated fibrosing mediastinitis from endobronchial lung cancer: initial results

ScienceDirect

Publication date: Available online 15 March 2024 Source: Clinical Radiology Author(s): Jingjing Yang, Liangna Deng, Mengyuan Jing, Min Xu, Xianwang Liu, Shenglin Li, Liping Zhang, Huaze Xi, Long Yuan, Junlin Zhou

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Bench to Bedside Imaging in Brain Metastases: A Road to Precision Oncology

ScienceDirect

Publication date: Available online 16 March 2024 Source: Clinical Radiology Author(s): Shreya Shukla, Aashna Karbhari, Shivam Rastogi, Ujjwal Agarwal, Pranjal Rai, Abhishek Mahajan

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Head-to-head comparison of PSMA PET/CT and Multiparametric MRI in the detection of biochemical recurrence of prostate cancer:A systematic review and meta-analysis

ScienceDirect

Our main goal of this meta-analytical analysis was to evaluate the diagnostic effectiveness of PSMA PET/CT against mpMRI in the context of identifying…

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Testing Innovations in Cancer: How to evaluate and use new technologies

Amidst rising cancer prevalence and soaring costs, new cancer technologies and innovations are emerging to support the early detection, treatment, and surveillance of cancer. Read this guide to understand how to evaluate these solutions for your employees and members – and to learn more about the current state of coverage, clinical and cost effectiveness, and impact on quality and outcomes.

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Accuracy of machine learning in the preoperative identification of ovarian borderline tumors: a meta-analysis

ScienceDirect

The objective of this study is to explore the diagnostic value of machine learning (ML) in borderline ovarian tumors by meta-analysis.