Google Shows AI Can Predict Lung Cancer from CT Scans
| By HospiMedica International staff writers Posted on 01 Jun 2019 | 
			
			Google LLC (Mountain View, CA, USA) has shared new research demonstrating how artificial intelligence (AI) can predict lung cancer to boost the chances of survival for people at risk across the world.
Since 2017, Google has been exploring how AI can be used to address the challenges in screening people at a high-risk for lung cancer with lower dose CT screening that leads to unclear diagnosis, subsequent unnecessary procedures, and financial costs. Google used advances in 3D volumetric modeling along with datasets from its partners for modeling lung cancer prediction and laying the groundwork for future clinical testing.
Generally, radiologists go through hundreds of 2D images within a single CT scan with cancer being miniscule and hard to spot. Google researchers created a model that can generate the overall lung cancer malignancy prediction (viewed in 3D volume) as well as identify subtle malignant tissue in the lungs (lung nodules). The model can also factor in information from previous scans, which can be useful in predicting lung cancer risk as the growth rate of suspicious lung nodules can be an indicator of malignancy.
The researchers leveraged 45,856 de-identified chest CT screening cases and validated the results with a second dataset and also compared their results against six US board-certified radiologists. They found that when using a single CT scan for diagnosis, their model performed on par or better than the six radiologists and detected 5% more cancer cases while reducing false-positive exams by more than 11% as compared to unassisted radiologists in the study. Google’s approach achieved an AUC (a common metric used in machine learning that provides an aggregate measure for classification performance) of 94.4%.
With only 2-4% of eligible patients in the US being currently screened for lung cancer, Google’s research demonstrates the potential for AI to increase accuracy as well as consistency, which could help accelerate the adoption of lung cancer screening globally. Google now plans to conduct further studies to assess its impact and utility in clinical practice. It is collaborating with Google Cloud Healthcare and Life Sciences team to serve the model through the Cloud Healthcare API and is holding discussions with its partners across the world to continue additional clinical validation research and deployment.
Related Links:
Google
		
			
			
		
        		        
		        Since 2017, Google has been exploring how AI can be used to address the challenges in screening people at a high-risk for lung cancer with lower dose CT screening that leads to unclear diagnosis, subsequent unnecessary procedures, and financial costs. Google used advances in 3D volumetric modeling along with datasets from its partners for modeling lung cancer prediction and laying the groundwork for future clinical testing.
Generally, radiologists go through hundreds of 2D images within a single CT scan with cancer being miniscule and hard to spot. Google researchers created a model that can generate the overall lung cancer malignancy prediction (viewed in 3D volume) as well as identify subtle malignant tissue in the lungs (lung nodules). The model can also factor in information from previous scans, which can be useful in predicting lung cancer risk as the growth rate of suspicious lung nodules can be an indicator of malignancy.
The researchers leveraged 45,856 de-identified chest CT screening cases and validated the results with a second dataset and also compared their results against six US board-certified radiologists. They found that when using a single CT scan for diagnosis, their model performed on par or better than the six radiologists and detected 5% more cancer cases while reducing false-positive exams by more than 11% as compared to unassisted radiologists in the study. Google’s approach achieved an AUC (a common metric used in machine learning that provides an aggregate measure for classification performance) of 94.4%.
With only 2-4% of eligible patients in the US being currently screened for lung cancer, Google’s research demonstrates the potential for AI to increase accuracy as well as consistency, which could help accelerate the adoption of lung cancer screening globally. Google now plans to conduct further studies to assess its impact and utility in clinical practice. It is collaborating with Google Cloud Healthcare and Life Sciences team to serve the model through the Cloud Healthcare API and is holding discussions with its partners across the world to continue additional clinical validation research and deployment.
Related Links:
Latest AI News
Channels
Critical Care
view channel 
                    Light-Based Technology to Measure Brain Blood Flow Could Diagnose Stroke and TBI
Monitoring blood flow in the brain is crucial for diagnosing and treating neurological conditions such as stroke, traumatic brain injury (TBI), and vascular dementia. However, current imaging methods like... Read more 
                    AI Heart Attack Risk Assessment Tool Outperforms Existing Methods
For decades, doctors have relied on standardized scoring systems to assess patients with the most common type of heart attack—non-ST-elevation acute coronary syndrome (NSTE-ACS). The GRACE score, used... Read moreSurgical Techniques
view channel 
                    Minimally Invasive Endoscopic Surgery Improves Severe Stroke Outcomes
Intracerebral hemorrhage, a type of stroke caused by bleeding deep within the brain, remains one of the most challenging neurological emergencies to treat. Accounting for about 15% of all strokes, it carries... Read more 
                    Novel Glue Prevents Complications After Breast Cancer Surgery
Seroma and prolonged lymphorrhea are among the most common complications following axillary lymphadenectomy in breast cancer patients. These postoperative issues can delay recovery and postpone the start... Read morePatient Care
view channel 
                    Revolutionary Automatic IV-Line Flushing Device to Enhance Infusion Care
More than 80% of in-hospital patients receive intravenous (IV) therapy. Every dose of IV medicine delivered in a small volume (<250 mL) infusion bag should be followed by subsequent flushing to ensure... Read more 
                    VR Training Tool Combats Contamination of Portable Medical Equipment
Healthcare-associated infections (HAIs) impact one in every 31 patients, cause nearly 100,000 deaths each year, and cost USD 28.4 billion in direct medical expenses. Notably, up to 75% of these infections... Read more 
                    Portable Biosensor Platform to Reduce Hospital-Acquired Infections
Approximately 4 million patients in the European Union acquire healthcare-associated infections (HAIs) or nosocomial infections each year, with around 37,000 deaths directly resulting from these infections,... Read more 
                    First-Of-Its-Kind Portable Germicidal Light Technology Disinfects High-Touch Clinical Surfaces in Seconds
Reducing healthcare-acquired infections (HAIs) remains a pressing issue within global healthcare systems. In the United States alone, 1.7 million patients contract HAIs annually, leading to approximately... Read moreHealth IT
view channel 
                    Printable Molecule-Selective Nanoparticles Enable Mass Production of Wearable Biosensors
The future of medicine is likely to focus on the personalization of healthcare—understanding exactly what an individual requires and delivering the appropriate combination of nutrients, metabolites, and... Read moreBusiness
view channel 
                    Philips and Masimo Partner to Advance Patient Monitoring Measurement Technologies
Royal Philips (Amsterdam, Netherlands) and Masimo (Irvine, California, USA) have renewed their multi-year strategic collaboration, combining Philips’ expertise in patient monitoring with Masimo’s noninvasive... Read more 
                    B. Braun Acquires Digital Microsurgery Company True Digital Surgery
The high-end microsurgery market in neurosurgery, spine, and ENT is undergoing a significant transformation. Traditional analog microscopes are giving way to digital exoscopes, which provide improved visualization,... Read more 
                    CMEF 2025 to Promote Holistic and High-Quality Development of Medical and Health Industry
The 92nd China International Medical Equipment Fair (CMEF 2025) Autumn Exhibition is scheduled to be held from September 26 to 29 at the China Import and Export Fair Complex (Canton Fair Complex) in Guangzhou.... Read more 
                    















 
								

 
								
 
								 
                     
                     
                     
                     
                    