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Computer program helps doctors diagnose lung cancer

Ann Arbor -Not all masses are cancer. When a person undergoes a scan to identify a lump or nodule, the radiologist looks at the texture, the borders and the shape to determine if it is malignant or just a benign growth.

A malignant lung nodule: (a) the 3D rendered nodule on a prior CT exam (Oct. 2000), (b) representative 2D slice of the lung nodule, (c) the 3D rendered nodule on a current CT exam (Nov. 2000), (d) representative 2D slice of the lung nodule. The computer classifier incorporating temporal information estimated 91% relative malignancy rating.

Researchers at the University of Michigan Comprehensive Cancer Center are developing computer-aided diagnosis (CAD) methods to make that assessment easier. A computer program reads the same scans the radiologist views, and the combined judgment of the computer and radiologist helps detect more cancers, the researchers found.

“Our system is designed to help the radiologist. From our experiences in evaluating CAD for breast cancer, using computer aids significantly improves the performance of the radiologist in predicting malignancies of the masses. Radiologists with computers are able to detect more cancers than radiologists by themselves. We expect that CAD for lung cancer can achieve similar results,” says Lubomir Hadjiyski, Ph.D., research assistant professor of Radiology at the U-M Medical School. Hadjiyski will present results of the lung cancer study Sunday, Nov. 28, at the Radiological Society of North America’s annual meeting in Chicago.

In the study, researchers looked at 41 CT scans that showed nodules in the lungs. Current scans and previous scans were fed through a computer program specially designed by the U-M researchers to evaluate the size, texture, density and change over time of the nodules. Based on that information, the computer determines how likely the nodule is cancerous.

Previous attempts at computer-aided diagnosis have the computer analyze only the current scan. By allowing the computer to read and compare a series of scans, it gets a complete picture and has the same information the radiologist has.

A CAD system is designed to provide a second opinion to radiologists. The computer analyzes the images with computer-vision techniques specially designed for a given type of cancer or disease. At the same time, the radiologist examines the images and evaluates the likelihood of cancer. The radiologist then compares the two results and makes a final decision.

In many cases, the computer and the radiologist might come to the same conclusion. In other cases, though, the computer may determine a low rate of malignancy for a patient where the radiologist is on the fence. This could tip the scale against performing a biopsy. And if there’s a big difference between the radiologist’s judgment and the computer’s, the patient can be called back for a second look.

“The radiologist is not perfect and the computer is not perfect, but working together they detect more cancers,” says Hadjiyski says.

Hadjiyski and his team have developed a similar program to detect breast cancer, and initial testing there is promising. The computer program for both lung and breast cancer needs FDA approval before it can be offered clinically. Hadjiyski stresses that computers will never replace the radiologist entirely but that the technology is meant to complement the radiologist’s judgment.

The one flaw with the computer-aided system is it may return false positive results, identifying masses as cancerous when they are benign. Hadjiyski notes, though, that overall the system detects more cancers. As the researchers fine-tune the technology, they hope to see fewer false positives, and may actually help radiologists identify benign lesions and reduce the number of people undergoing biopsies. Researchers hope next to develop a system that will both detect a lesion and identify it as malignant or benign.

In addition to Hadjiyski, researchers were Berkman Sahiner, Ph.D., associate professor of Radiology; Heang-Ping Chan, Ph.D., professor of Radiology; Naama Bogot, M.D., clinical lecturer in Radiology; Philip Cascade, M.D., professor of Cardiology and Radiology; and Ella Kazerooni, M.D., professor of Radiology.

For information about lung cancer, call the Cancer AnswerLine™ at (800) 865-1125.

Contact: Nicole Fawcett

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Please note: The articles listed in the Cancer Center's News Archive are here for historical purposes. The information and links may no longer be up-to-date.