Artificial intelligence in breast imaging: potentials and challenges DOI Creative Commons

Jia-wei Li,

Danli Sheng,

Jiangang Chen

и другие.

Physics in Medicine and Biology, Год журнала: 2023, Номер 68(23), С. 23TR01 - 23TR01

Опубликована: Сен. 18, 2023

Breast cancer, which is the most common type of malignant tumor among humans, a leading cause death in females. Standard treatment strategies, including neoadjuvant chemotherapy, surgery, postoperative targeted therapy, endocrine and radiotherapy, are tailored for individual patients. Such personalized therapies have tremendously reduced threat breast cancer Furthermore, early imaging screening plays an important role reducing cycle improving prognosis. The recent innovative revolution artificial intelligence (AI) has aided radiologists accurate diagnosis cancer. In this review, we introduce necessity incorporating AI into applications mammography, ultrasonography, magnetic resonance imaging, positron emission tomography/computed tomography based on published articles since 1994. Moreover, challenges discussed.

Язык: Английский

Artificial intelligence in breast cancer imaging: risk stratification, lesion detection and classification, treatment planning and prognosis—a narrative review DOI Creative Commons
Maurizio Cè,

Elena Caloro,

Maria Elena Pellegrino

и другие.

Exploration of Targeted Anti-tumor Therapy, Год журнала: 2022, Номер unknown, С. 795 - 816

Опубликована: Дек. 27, 2022

The advent of artificial intelligence (AI) represents a real game changer in today's landscape breast cancer imaging. Several innovative AI-based tools have been developed and validated recent years that promise to accelerate the goal patient-tailored management. Numerous studies confirm proper integration AI into existing clinical workflows could bring significant benefits women, radiologists, healthcare systems. approach has proved particularly useful for developing new risk prediction models integrate multi-data streams planning individualized screening protocols. Furthermore, help radiologists pre-screening lesion detection phase, increasing diagnostic accuracy, while reducing workload complications related overdiagnosis. Radiomics radiogenomics approaches extrapolate so-called imaging signature tumor plan targeted treatment. main challenges development are huge amounts high-quality data required train validate these need multidisciplinary team with solid machine-learning skills. purpose this article is present summary most important applications imaging, analyzing possible perspectives widespread adoption tools.

Язык: Английский

Процитировано

25

Machine Learning Approaches with Textural Features to Calculate Breast Density on Mammography DOI Creative Commons
Mario Sansone, Roberta Fusco, Francesca Grassi

и другие.

Current Oncology, Год журнала: 2023, Номер 30(1), С. 839 - 853

Опубликована: Янв. 7, 2023

breast cancer (BC) is the world's most prevalent in female population, with 2.3 million new cases diagnosed worldwide 2020. The great efforts made to set screening campaigns, early detection programs, and increasingly targeted treatments led significant improvement patients' survival. Full-Field Digital Mammograph (FFDM) considered gold standard method for diagnosis of BC. From several previous studies, it has emerged that density (BD) a risk factor development BC, affecting periodicity plans present today at an international level.in this study, focus mammographic image processing techniques allow extraction indicators derived from textural patterns mammary parenchyma indicative BD factors.a total 168 patients were enrolled internal training test while 51 compose external validation cohort. Different Machine Learning (ML) have been employed classify breasts based on values tissue density. Textural features extracted only which train classifiers, thanks aid ML algorithms.the accuracy different tested classifiers varied between 74.15% 93.55%. best results reached by Support Vector (accuracy 93.55% percentage true positives negatives equal TPP = 94.44% TNP 92.31%). was not influenced choice selection approach. Considering cohort, SVM, as classifier 7 selected wrapper method, showed 0.95, sensitivity 0.96, specificity 0.90.our preliminary Radiomics analysis approach us objectively identify BD.

Язык: Английский

Процитировано

16

Barriers and facilitators of artificial intelligence conception and implementation for breast imaging diagnosis in clinical practice: a scoping review DOI Creative Commons

Belinda Lokaj,

Marie‐Thérèse Pugliese,

Karen Kinkel

и другие.

European Radiology, Год журнала: 2023, Номер 34(3), С. 2096 - 2109

Опубликована: Сен. 2, 2023

Although artificial intelligence (AI) has demonstrated promise in enhancing breast cancer diagnosis, the implementation of AI algorithms clinical practice encounters various barriers. This scoping review aims to identify these barriers and facilitators highlight key considerations for developing implementing solutions imaging.

Язык: Английский

Процитировано

15

Multiparametric MRI-Based Interpretable Radiomics Machine Learning Model Differentiates Medulloblastoma and Ependymoma in Children: A Two-Center Study DOI Creative Commons

Yasen Yimit,

Parhat Yasin,

Abudouresuli Tuersun

и другие.

Academic Radiology, Год журнала: 2024, Номер 31(8), С. 3384 - 3396

Опубликована: Март 20, 2024

Язык: Английский

Процитировано

6

Exploring deep learning radiomics for classifying osteoporotic vertebral fractures in X-ray images DOI Creative Commons
Jun Zhang, Liang Xia, Jiayi Liu

и другие.

Frontiers in Endocrinology, Год журнала: 2024, Номер 15

Опубликована: Март 28, 2024

Purpose To develop and validate a deep learning radiomics (DLR) model that uses X-ray images to predict the classification of osteoporotic vertebral fractures (OVFs). Material methods The study encompassed cohort 942 patients, involving examinations 1076 vertebrae through X-ray, CT, MRI across three distinct hospitals. OVFs were categorized as class 0, 1, or 2 based on Assessment System Thoracolumbar Osteoporotic Fracture. dataset was divided randomly into four subsets: training set comprising 712 samples, an internal validation with 178 external containing 111 prospective consisting 75 samples. ResNet-50 architectural used implement transfer (DTL), undergoing -pre-training separately RadImageNet ImageNet datasets. Features from DTL extracted integrated using images. optimal fusion feature identified least absolute shrinkage selection operator logistic regression. Evaluation predictive capabilities for involved eight machine models, assessed receiver operating characteristic curves employing “One-vs-Rest” strategy. Delong test applied compare performance superior against model. Results Following pre-training datasets, yielded 17 12 features, respectively. Logistic regression emerged algorithm both DLR models. Across set, macro-average Area Under Curve (AUC) surpassed those dataset, statistically significant differences observed (P<0.05). Utilizing binary strategy, demonstrated efficacy in predicting Class achieving AUC 0.969 accuracy 0.863. Predicting 1 0.945 0.875, while 2, 0.809 0.692, Conclusion model, outperformed OVFs, generalizability confirmed set.

Язык: Английский

Процитировано

6

Ability of Delta Radiomics to Predict a Complete Pathological Response in Patients with Loco-Regional Rectal Cancer Addressed to Neoadjuvant Chemo-Radiation and Surgery DOI Open Access
Valerio Nardone, Alfonso Reginelli, Roberta Grassi

и другие.

Cancers, Год журнала: 2022, Номер 14(12), С. 3004 - 3004

Опубликована: Июнь 18, 2022

We performed a pilot study to evaluate the use of MRI delta texture analysis (D-TA) as methodological item able predict frequency complete pathological responses and, consequently, outcome patients with locally advanced rectal cancer addressed neoadjuvant chemoradiotherapy (C-RT) and subsequently, radical surgery. In particular, we carried out retrospective including 100 adenocarcinoma who received C-RT then surgery in three different oncological institutions between January 2013 December 2019. Our experimental design was focused on evaluation gross tumor volume (GTV) at baseline after by means MRI, which contoured T2, DWI, ADC sequences. Multiple parameters were extracted using LifeX Software, while D-TA calculated percentage variations two time points. Both univariate multivariate (logistic regression) were, therefore, order correlate above-mentioned TA examined patients’ population focusing detection response (pCR, no viable cells: TRG 1) main statistical endpoint. ROC curves datasets considering that 21 patients, only 21% achieved an actual pCR. our training dataset series, pCR significantly correlated GLCM-Entropy only, when binary logistic (AUC for 0.87). A confirmative regression repeated remaining validation 0.92 0.88, respectively). Overall, these results support hypothesis may have significant predictive value detecting occurrence patient series. If confirmed prospective multicenter trials, critical role selection benefit form chemoradiotherapy.

Язык: Английский

Процитировано

20

Risk Assessment and Pancreatic Cancer: Diagnostic Management and Artificial Intelligence DOI Open Access
Vincenza Granata, Roberta Fusco, Sergio Venanzio Setola

и другие.

Cancers, Год журнала: 2023, Номер 15(2), С. 351 - 351

Опубликована: Янв. 5, 2023

Pancreatic cancer (PC) is one of the deadliest cancers, and it responsible for a number deaths almost equal to its incidence. The high mortality rate correlated with several explanations; main late disease stage at which majority patients are diagnosed. Since surgical resection has been recognised as only curative treatment, PC diagnosis initial believed tool improve survival. Therefore, patient stratification according familial genetic risk creation screening protocol by using minimally invasive diagnostic tools would be appropriate. cystic neoplasms (PCNs) subsets lesions deserve special management avoid overtreatment. current programs based on annual employment magnetic resonance imaging cholangiopancreatography sequences (MR/MRCP) and/or endoscopic ultrasonography (EUS). For unfit MRI, computed tomography (CT) could proposed, although CT results in lower detection rates, compared small lesions. actual major limit incapacity detect characterize pancreatic intraepithelial neoplasia (PanIN) EUS MR/MRCP. possibility utilizing artificial intelligence models evaluate higher-risk favour these entities, more data needed support real utility applications field screening. motives, appropriate realize research settings.

Язык: Английский

Процитировано

13

Radiomics in Lung Metastases: A Systematic Review DOI Open Access
Michela Gabelloni, Lorenzo Faggioni, Roberta Fusco

и другие.

Journal of Personalized Medicine, Год журнала: 2023, Номер 13(2), С. 225 - 225

Опубликована: Янв. 27, 2023

Due to the rich vascularization and lymphatic drainage of pulmonary tissue, lung metastases (LM) are not uncommon in patients with cancer. Radiomics is an active research field aimed at extraction quantitative data from diagnostic images, which can serve as useful imaging biomarkers for a more effective, personalized patient care. Our purpose illustrate current applications, strengths weaknesses radiomics lesion characterization, treatment planning prognostic assessment LM, based on systematic review literature.

Язык: Английский

Процитировано

12

Peritoneal Carcinosis: What the Radiologist Needs to Know DOI Creative Commons
Alfonso Reginelli,

Giuliana Giacobbe,

Maria Teresa Del Canto

и другие.

Diagnostics, Год журнала: 2023, Номер 13(11), С. 1974 - 1974

Опубликована: Июнь 5, 2023

Peritoneal carcinosis is a condition characterized by the spread of cancer cells to peritoneum, which thin membrane that lines abdominal cavity. It serious can result from many different types cancer, including ovarian, colon, stomach, pancreatic, and appendix cancer. The diagnosis quantification lesions in peritoneal are critical management patients with condition, imaging plays central role this process. Radiologists play vital multidisciplinary carcinosis. They need have thorough understanding pathophysiology underlying neoplasms, typical findings. In addition, they be aware differential diagnoses advantages disadvantages various methods available. Imaging lesions, radiologists Ultrasound, computed tomography, magnetic resonance, PET/CT scans used diagnose Each procedure has disadvantages, particular techniques recommended based on patient conditions. Our aim provide knowledge regarding appropriate techniques, findings, diagnoses, treatment options. With advent AI oncology, future precision medicine appears promising, interconnection between structured reporting likely improve diagnostic accuracy outcomes for

Язык: Английский

Процитировано

11

CT-Based Radiomics Predicts the Malignancy of Pulmonary Nodules: A Systematic Review and Meta-Analysis DOI
Lili Shi, Meihong Sheng,

Zhichao Wei

и другие.

Academic Radiology, Год журнала: 2023, Номер 30(12), С. 3064 - 3075

Опубликована: Июнь 27, 2023

Язык: Английский

Процитировано

11