The Potential Role of Artificial Intelligence in Lung Cancer Screening Using Low-Dose Computed Tomography.
Philippe A GrenierAnne Laure BrunFrançois MellotPublished in: Diagnostics (Basel, Switzerland) (2022)
Two large randomized controlled trials of low-dose CT (LDCT)-based lung cancer screening (LCS) in high-risk smoker populations have shown a reduction in the number of lung cancer deaths in the screening group compared to a control group. Even if various countries are currently considering the implementation of LCS programs, recurring doubts and fears persist about the potentially high false positive rates, cost-effectiveness, and the availability of radiologists for scan interpretation. Artificial intelligence (AI) can potentially increase the efficiency of LCS. The objective of this article is to review the performances of AI algorithms developed for different tasks that make up the interpretation of LCS CT scans, and to estimate how these AI algorithms may be used as a second reader. Despite the reduction in lung cancer mortality due to LCS with LDCT, many smokers die of comorbid smoking-related diseases. The identification of CT features associated with these comorbidities could increase the value of screening with minimal impact on LCS programs. Because these smoking-related conditions are not systematically assessed in current LCS programs, AI can identify individuals with evidence of previously undiagnosed cardiovascular disease, emphysema or osteoporosis and offer an opportunity for treatment and prevention.
Keyphrases
- artificial intelligence
- computed tomography
- machine learning
- deep learning
- dual energy
- low dose
- big data
- image quality
- contrast enhanced
- positron emission tomography
- cardiovascular disease
- smoking cessation
- public health
- magnetic resonance imaging
- randomized controlled trial
- high dose
- primary care
- cardiovascular events
- chronic obstructive pulmonary disease
- bone mineral density
- type diabetes
- systematic review
- idiopathic pulmonary fibrosis
- coronary artery disease
- genetic diversity
- study protocol
- cardiovascular risk factors