» Articles » PMID: 30720861

Artificial Intelligence in Cancer Imaging: Clinical Challenges and Applications

Abstract

Judgement, as one of the core tenets of medicine, relies upon the integration of multilayered data with nuanced decision making. Cancer offers a unique context for medical decisions given not only its variegated forms with evolution of disease but also the need to take into account the individual condition of patients, their ability to receive treatment, and their responses to treatment. Challenges remain in the accurate detection, characterization, and monitoring of cancers despite improved technologies. Radiographic assessment of disease most commonly relies upon visual evaluations, the interpretations of which may be augmented by advanced computational analyses. In particular, artificial intelligence (AI) promises to make great strides in the qualitative interpretation of cancer imaging by expert clinicians, including volumetric delineation of tumors over time, extrapolation of the tumor genotype and biological course from its radiographic phenotype, prediction of clinical outcome, and assessment of the impact of disease and treatment on adjacent organs. AI may automate processes in the initial interpretation of images and shift the clinical workflow of radiographic detection, management decisions on whether or not to administer an intervention, and subsequent observation to a yet to be envisioned paradigm. Here, the authors review the current state of AI as applied to medical imaging of cancer and describe advances in 4 tumor types (lung, brain, breast, and prostate) to illustrate how common clinical problems are being addressed. Although most studies evaluating AI applications in oncology to date have not been vigorously validated for reproducibility and generalizability, the results do highlight increasingly concerted efforts in pushing AI technology to clinical use and to impact future directions in cancer care.

Citing Articles

AI-driven biomarker discovery: enhancing precision in cancer diagnosis and prognosis.

Alum E Discov Oncol. 2025; 16(1):313.

PMID: 40082367 PMC: 11906928. DOI: 10.1007/s12672-025-02064-7.


Intra- and peri-tumoral radiomics based on dynamic contrast-enhanced MRI for prediction of benign disease in BI-RADS 4 breast lesions: a multicentre study.

Hu Y, Cai Z, Aierken N, Liu Y, Shao N, Shi Y Radiat Oncol. 2025; 20(1):27.

PMID: 40022114 PMC: 11871624. DOI: 10.1186/s13014-025-02605-y.


Research trends and hotspots evolution of artificial intelligence for cholangiocarcinoma over the past 10 years: a bibliometric analysis.

Wang K, Li Y, Yang S, Li F Front Oncol. 2025; 14:1454411.

PMID: 40017633 PMC: 11865243. DOI: 10.3389/fonc.2024.1454411.


Bone tumors: a systematic review of prevalence, risk determinants, and survival patterns.

Hosseini H, Heydari S, Hushmandi K, Daneshi S, Raesi R BMC Cancer. 2025; 25(1):321.

PMID: 39984867 PMC: 11846205. DOI: 10.1186/s12885-025-13720-0.


Externally validated and clinically useful machine learning algorithms to support patient-related decision-making in oncology: a scoping review.

Santos C, Amorim-Lopes M BMC Med Res Methodol. 2025; 25(1):45.

PMID: 39984835 PMC: 11843972. DOI: 10.1186/s12874-025-02463-y.


References
1.
Freer T, Ulissey M . Screening mammography with computer-aided detection: prospective study of 12,860 patients in a community breast center. Radiology. 2001; 220(3):781-6. DOI: 10.1148/radiol.2203001282. View

2.
Karssemeijer N, Otten J, Rijken H, Holland R . Computer aided detection of masses in mammograms as decision support. Br J Radiol. 2007; 79 Spec No 2:S123-6. DOI: 10.1259/bjr/37622515. View

3.
Aberle D, Adams A, Berg C, Black W, Clapp J, Fagerstrom R . Reduced lung-cancer mortality with low-dose computed tomographic screening. N Engl J Med. 2011; 365(5):395-409. PMC: 4356534. DOI: 10.1056/NEJMoa1102873. View

4.
Parmar C, Grossmann P, Bussink J, Lambin P, Aerts H . Machine Learning methods for Quantitative Radiomic Biomarkers. Sci Rep. 2015; 5:13087. PMC: 4538374. DOI: 10.1038/srep13087. View

5.
Sauwen N, Acou M, Sima D, Veraart J, Maes F, Himmelreich U . Semi-automated brain tumor segmentation on multi-parametric MRI using regularized non-negative matrix factorization. BMC Med Imaging. 2017; 17(1):29. PMC: 5418702. DOI: 10.1186/s12880-017-0198-4. View