Abstract

Increasingly, computed tomography (CT) offers higher resolution and faster acquisition times. This has resulted in the opportunity to detect small lung nodules, which may represent lung cancers at earlier and potentially more curable stages. However, in the current clinical practice, hundreds of such thin‐sectional CT images are generated for each patient and are evaluated by a radiologist in the traditional sense of looking at each image in the axial mode. This results in the potential to miss small nodules and thus potentially miss a cancer. In this paper, we present a computerized method for automated identification of small lung nodules on multislice CT (MSCT) images. The method consists of three steps: (i) separation of the lungs from the other anatomic structures, (ii) detection of nodule candidates in the extracted lungs, and (iii) reduction of false‐positives among the detected nodule candidates. A three‐dimensional lung mask can be extracted by analyzing density histogram of volumetric chest images followed by a morphological operation. Higher density structures including nodules scattered throughout the lungs can be identified by using a local density maximum algorithm. Information about nodules such as size and compact shape are then incorporated into the algorithm to reduce the detected nodule candidates which are not likely to be nodules. The method was applied to the detection of computer simulated small lung nodules (2 to 7 mm in diameter) and achieved a sensitivity of 84.2% with, on average, five false‐positive results per scan. The preliminary results demonstrate the potential of this technique for assisting the detection of small nodules from chest MSCT images.PACS number(s): 87.57.–s, 87.90.+y

Highlights

  • Lung cancer is the leading cause of cancer death in both men and women in the USA

  • We present our preliminary study on the development of an advanced multiple thresholding method for the automated detection of small lung nodules

  • 266 simulated small nodules were added onto eight normal chest CT scans, each scan having 60 to 80 slices. 251 nodules were detected by the LDM algorithm, corresponding to a detection sensitivity of 94.4%

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Summary

Introduction

Lung cancer is the leading cause of cancer death in both men and women in the USA. In 2002, it is estimated that there would be 169 400 newly diagnosed cases of lung cancer and 157 900 deaths from this disease in the United States.[1] More people die of lung cancer than of colon, breast, and prostate cancersthe three most deadly cancerscombined. Radiation therapy, and chemotherapy have been used in the treatment of lung carcinoma, the five-year survival rate for all stages combined is only 14%. This has not changed in the past three decades.

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