News | Radiomics | March 21, 2019

Computer identifies patterns both in and outside lung tumors to predict chemotherapy benefit

Researchers Use Radiomics to Predict Who Will Benefit from Chemotherapy

March 21, 2019 — Using data from computed tomography (CT) images, researchers may be able to predict which lung cancer patients will respond to chemotherapy, according to a new study published in the journal Radiology: Artificial Intelligence.1

Platinum-based chemotherapy is typically the first-line treatment of advanced-stage non–small cell lung cancer (NSCLC). However, only about one in four patients responds well to this treatment. Currently, there is no way to predict which patients will benefit most from chemotherapy.

CT exams are routinely used for tumor staging and monitoring treatment response. Using a field of study called radiomics, researchers can extract quantitative, or measurable, data from CT images that can reveal disease characteristics not visible in the images alone.

“Our aim in this study was to determine whether an early prediction of response to chemotherapy is possible by using computer-extracted measurements of patterns both within and outside the lung nodule, along with the shape of the nodule, on baseline CT scans,” said Mohammadhadi Khorrami, M.S., a Ph.D. candidate from the Department of Biomedical Engineering, Case Western Reserve University School of Engineering in Cleveland, Ohio, who, along with Monica Khunger, M.D., from the Department of Internal Medicine at Cleveland Clinic, led the study.

The researchers set out to identify the role of radiomic texture features — both within and around the lung tumor — in predicting time to progression and overall survival, as well as response to chemotherapy in patients with NSCLC.

“This is the first study to demonstrate that computer-extracted patterns of heterogeneity, or diversity, from outside the tumor were predictive of response to chemotherapy,” Khunger said. “This is very critical because it could allow for predicting in advance of therapy which patients with lung cancer are likely to respond or not. This, in turn, could help identify patients who are likely to not respond to chemotherapy for alternative therapies such as radiation or immunotherapy.”

They analyzed data from 125 patients who had been treated with pemetrexed-based platinum doublet chemotherapy at Cleveland Clinic. The patients were divided randomly into two sets, with an equal number of responders and non-responders in the training set. The training set comprised 53 patients with NSCLC, and the validation set comprised 72 patients.

A computer analyzed the CT images of lung cancer to identify unique patterns of heterogeneity both inside and outside the tumor. These patterns were then compared between CT scans of patients who did and did not respond to chemotherapy. These feature patterns were then used to train a machine learning classifier to identify the likelihood that a lung cancer patient would respond to chemotherapy.

“When we looked at patterns inside the tumor, we got an accuracy of 0.68. But when we looked inside and outside, the accuracy went up to 0.77,” Khorrami said.

The results showed that the radiomic features derived from within the tumor and the area around the tumor were able to distinguish patients who responded to chemotherapy from those who did not. In addition, the radiomic features predicted time to progression and overall survival.

“Despite the large number of studies in the CT-radiomics space, the immediate surrounding tumor area, or the peritumoral region, has remained relatively unexplored,” Khorrami said. “Our results showed clear evidence of the role of peritumoral texture patterns in predicting response and time to progression after chemotherapy.”

Although the researchers did not explicitly study the basis for the identified radiomic features around the tumor, they hypothesize that these patterns reflect increased fibrotic content in chemotherapy-compliant tumors.

According to Khorrami, the radiomic data derived from CT images can also potentially help identify those patients who are at elevated risk for recurrence and who might benefit from more intensive observation and follow-up.

Watch the VIDEO: Application of Radiomics Imaging Technology in Radiation Therapy

For more information: www.pubs.rsna.org/journal/ai

Reference

1. Khorrami M., Khunger M., Zagouras A., et al. Combination of Peri- and Intratumoral Radiomic Features on Baseline CT Scans Predicts Response to Chemotherapy in Lung Adenocarcinoma. Radiology, March 20, 2019. https://doi.org/10.1148/ryai.2019180012


Related Content

News | Radiology Imaging | UC San Diego Health

Oct. 16, 2025 — A strategic collaboration between UC San Diego Health and GE HealthCare will focus on bringing advanced ...

Time October 20, 2025
arrow
News | X-Ray

Sept. 08, 2025 — A new clinical case study, presented by Qure.ai and Hacettepe University, Turkey, at the IASLC World ...

Time September 10, 2025
arrow
News | Mammography

Sept. 3, 2025 — According to ARRS’ American Journal of Roentgenology (AJR), a commercial artificial intelligence (AI) ...

Time September 09, 2025
arrow
News | Lung Imaging

Aug. 26, 2025 — Optellum, a global leader in AI for lung health, recently announced the world’s first thorax CT ...

Time August 26, 2025
arrow
News | RSNA

Aug. 13, 2025 — Registration is now open for the RSNA 111th Scientific Assembly and Annual Meeting, the world’s leading ...

Time August 13, 2025
arrow
News | Artificial Intelligence

July 22, 2025 — GE HealthCare has topped a U.S. Food and Drug Administration (FDA) list of AI-enabled medical device ...

Time July 23, 2025
arrow
News | Breast Imaging

QT Imaging Holdings, Inc. has announced the launch of its latest QTviewer, version 2.8. QTviewer stores and displays the ...

Time July 21, 2025
arrow
News | PET-CT

June 19, 2025 — Building on a collaboration that spans more than three decades, GE HealthCare has renewed its research ...

Time June 19, 2025
arrow
News | Lung Imaging

April, 15, 2025 — Optellum has entered an agreement with Bristol Myers Squibb to leverage AI in early diagnosis and ...

Time April 17, 2025
arrow
News | Pediatric Imaging

April 10, 2025 — Cincinnati Children’s and GE HealthCare will form a strategic research program focused on driving ...

Time April 10, 2025
arrow
Subscribe Now