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Primary Pulmonary Tumors in Pediatric Population: Imaging Markers for Predicting Histology.

作者信息

Dawani Anuradha, Bhalla Ashu Seith, Jana Manisha, Agarwala Sandeep, Naranje Priyanka

机构信息

Department of Radiodiagnosis, All India Institute of Medical Sciences, New Delhi, India.

Department of Pediatric Surgery, All India Institute of Medical Sciences, New Delhi, India.

出版信息

J Indian Assoc Pediatr Surg. 2020 Nov-Dec;25(6):363-367. doi: 10.4103/jiaps.JIAPS_156_19. Epub 2020 Oct 27.

Abstract

OBJECTIVES

The objective of the study was to review the imaging features of proven pediatric primary lung tumors, with a purpose of detecting key distinguishing features among the various entities.

MATERIALS AND METHODS

We retrospectively reviewed multidetector computed tomography (CT) images of 17 pediatric patients with primary lung tumors. For each examination, various CT image descriptors were used to characterize the pulmonary nodules/masses; including location, size, number, morphology, cavitation, calcification, intense enhancement, airway involvement, chest wall/pleural involvement, mediastinal/vascular involvement, and nodal enlargement.

RESULTS

The age of the patients ranged from 2 to 18 years (mean age of 9.5 years). Approximately 35.3% of tumors were benign and 64.7% were aggressive/malignant. Nine distinct histopathologic tumor entities were found. Common tumor types were recurrent respiratory papillomatosis (4) and inflammatory myofibroblastic tumor (4) with two endobronchial tumors including carcinoid and mucoepidermoid carcinomas. Besides invasion and nodal enlargement, large size and central location ( < 0.05) were predictors of aggressiveness/malignancy. Multiple lesions and cavitation ( < 0.05), on the other hand, were frequent in benign lesions.

CONCLUSION

On imaging, location and morphological markers can allow diagnosis in majority of the tumors.

摘要
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ca89/7815042/b32eedd35bc6/JIAPS-25-363-g001.jpg

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