| Literature DB >> 35909214 |
Mohammed R S Sunoqrot1,2, Anindo Saha3, Matin Hosseinzadeh3, Mattijs Elschot4,5, Henkjan Huisman4,3.
Abstract
Artificial intelligence (AI) for prostate magnetic resonance imaging (MRI) is starting to play a clinical role for prostate cancer (PCa) patients. AI-assisted reading is feasible, allowing workflow reduction. A total of 3,369 multi-vendor prostate MRI cases are available in open datasets, acquired from 2003 to 2021 in Europe or USA at 3 T (n = 3,018; 89.6%) or 1.5 T (n = 296; 8.8%), 346 cases scanned with endorectal coil (10.3%), 3,023 (89.7%) with phased-array surface coils; 412 collected for anatomical segmentation tasks, 3,096 for PCa detection/classification; for 2,240 cases lesions delineation is available and 56 cases have matching histopathologic images; for 2,620 cases the PSA level is provided; the total size of all open datasets amounts to approximately 253 GB. Of note, quality of annotations provided per dataset highly differ and attention must be paid when using these datasets (e.g., data overlap). Seven grand challenges and commercial applications from eleven vendors are here considered. Few small studies provided prospective validation. More work is needed, in particular validation on large-scale multi-institutional, well-curated public datasets to test general applicability. Moreover, AI needs to be explored for clinical stages other than detection/characterization (e.g., follow-up, prognosis, interventions, and focal treatment).Entities:
Keywords: Artificial intelligence; Deep learning; Image processing (computer-assisted); Multiparametric magnetic resonance imaging; Prostatic neoplasms
Mesh:
Year: 2022 PMID: 35909214 PMCID: PMC9339427 DOI: 10.1186/s41747-022-00288-8
Source DB: PubMed Journal: Eur Radiol Exp ISSN: 2509-9280
Fig. 1Use of artificial intelligence in the radiological workflow of prostate magnetic resonance imaging to automate, improve, and support critical tasks, considering radiomics and deep learning approaches
Summary of prostate MRI public datasets
| Number | Dataset | Data source | Modalities | Dataset size | Acquisition years | Files size | Data type | Field strength | Scanner manufacturer and model | Coil type | Clinical variables | Purpose | Reference |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | PROSTATE-MRI | TNCI | MRI (triplanar T2W, DWI, pre-contrast T1W, DCE) | MRI cases ( | 2008–2010 | 3.4 GB | MRI cases (DICOM), pathology images (JPEG) | 3 T | Philips Achieva | Endorectal | Gleason grade ( | Disease classification | [ |
| 2 | Prostate Fused-MRI-Pathology | WRUHC, HUP | MRI (triplanar T2W, DWI, pre-contrast T1W, DCE) | MRI cases ( | 2009–2011 | 81.2 GB | MRI cases (DICOM), pathology images (TIFF, XML) | 3 T | Siemens Verio | Endorectal | Not reported | Disease classification | [ |
| 3 | Prostate-3T | RUMC | MRI (axial T2W) | MRI cases ( | 2003–2005 | 610 MB | MRI cases (DICOM), SV and NVB segmentations (MHA) | 3 T | Siemens Trio | Pelvic phased-array surface | Not reported | Cancer detection | [ |
| 4 | ICCVB | Not reported | MRI (axialT2W, DWI, DCE, ADC) | MRI cases ( | Not reported | 5.6 GB | MRI cases (DICOM) | 1.5 T ( | GE ( | Endorectal ( | Not reported | Cancer detection | [ |
| 5 | TCGA-PRAD | UPMC, WHSL, LHMC | MRI (axial T2W, DWI, pre-contrast T1W, DCE, ADC), CT, PET | MRI cases ( | Not reported | 3.74 GB | MRI cases (DICOM), CT images (DICOM), PET images (DICOM), pathology images (WEB), genomics data (WEB) | 1.5 T | GE Signa HDx | Endorectal | PSA ( | Disease classification, Cancer detection | [ |
| 6 | PROSTATE-DIAGNOSIS | BMC | MRI (axial and coronal T2W, DWI, pre-contrast T1W, DCE) | MRI cases ( | 2008–2010 | 5.6 GB | MRI cases (DICOM), SV and NVB segmentations (MHA), zones and lesions segmentations (NRRD) | 1.5 T | Philips Achieva | Endorectal | Full report for: MRI ( | Disease classification, Cancer detection | [ |
| 7 | Prostate-MRI-US-Biopsy | UCCUC | MRI (axial T2W), Ultrasound | MRI cases ( | 2004–2011 | 78.2 GB | MRI cases (DICOM), ultrasound cases (DICOM), gland and lesions segmentations (STL) | MRI: 3 T ( | MRI: Siemens Skyra ( | MRI: Transabdominal phased-array surface. Ultrasound: End-fire probe | PIRADS ( | Disease classification, Cancer detection | [ |
| 8 | QIN PROSTATE | BWH | MRI (axial T2W, DWI, pre-contrast T1W, DCE, ADC) | MRI cases ( | Not reported | 4.4 GB | MRI cases (DICOM) | 3 T | GE Signa HDx | Endorectal | Not reported | Disease classification, Cancer detection | [ |
| 9 | QIN-PROSTATE-Repeatability | BWH | MRI (axial T2W, DWI, DCE, ADC) | MRI cases ( | 2013–2015 | 14.86 GB | MRI cases (DICOM), zone and lesions segmentations (DICOM) | 3 T | GE Signa HDx | Endorectal | Not reported | Repeatability measurements, Disease classification | [ |
| 10 | SPIE-AAPM-NCI PROSTATEx Challenges | RUMC | MRI (triplanar T2W, DWI, DCE, ADC, PDW) | MRI cases ( | 2012 | 15.4 GB | MRI cases (DICOM), Ktrans images (MHD), thumbnail images (BMP) | 3 T | Siemens Trio ( | Pelvic phased-array surface | Lesion location ( | Disease classification, Cancer detection | [ |
| 11 | NCI-ISBI 2013 ASPS Challenge | BMC, RUMC | MRI (axial T2W) | MRI cases ( | 2003–2010 | 600 MB | MRI cases (DICOM), zones segmentations (NRRD) | 1.5 T ( | Philips Achieva ( | Endorectal ( | Not reported | Zones segmentation | [ |
| 12 | PROMISE12 Challenge | HUH, BIDMC, UCL, RUMC | MRI (axial T2W) | MRI cases ( | Not reported | 1.2 GB | MRI cases (MHD), gland segmentations (MHD) | 1.5 T ( | GE ( | Endorectal ( | Not reported | Whole gland segmentation | [ |
| 13 | Medical Segmentation Decathlon | RUMC | MRI (axial T2W, ADC) | MRI cases ( | Not reported | 229 MB | MRI cases (NII.GZ), zones segmentations (NII.GZ) | 3 T | Not reported | Phased-array surface coil | Not reported | Zones segmentation | [ |
| 14 | QUBIQ21 Challenge | Not reported | MRI (axial T2W) | MRI cases ( | Not reported | 2.04 GB | MRI cases (NII.GZ), whole and central gland segmentations (NII.GZ) | Not reported | Not reported | Endorectal | Not reported | Segmentation uncertainty estimation | [ |
| 15 | NCIGT-PROSTATE | BMWH | MRI (triplanar T2W) | MRI cases ( | Not reported | 768 MB | MRI cases (DICOM) | 3 T | GE Signa HDx | Endorectal | Not reported | Whole gland segmentation | [ |
| 16 | PI-CAI Challenge | RUMC, UMCG, ZGT | MRI (triplanar T2W, DWI, ADC) | MRI cases ( | 2012-2021 | 32.5 GB | MRI cases (MHA), lesions segmentations (NII.GZ) | 1.5 T ( | Siemens ([Skyra 3 T, TrioTim 3 T, Prisma 3 T, Aera 1.5 T, Avanto 1.5 T, Espree 1.5 T]; | Phased-array surface coil | Age ( | Disease classification, Cancer detection | [ |
| 17 | Prostate158 | CUB | MRI (axial T2W, DWI, ADC) | MRI cases ( | Not reported | 2.6 GB | MRI cases (NII.GZ), zones and lesions segmentations (NII.GZ) | 3 T | Not reported | Phased-array surface coil | Not reported | Zones segmentation, Cancer detection | [ |
ADC Apparent diffusion coefficient; BIDMC Beth Israel Deaconess Medical Center, Boston, MA, USA; BMC Boston Medical Center, Boston, MA, USA; BWH Brigham and Women’s Hospital, Boston, MA, USA; CT Computed Tomography; CUB Charité-Universitätsmedizin Berlin, Berlin, Germany; DCE Dynamic contrast-enhanced; DWI Diffusion-weighted imaging; GE General Electric Healthcare Systems, Milwaukee, WI, USA; HUH Haukeland University Hospital, Bergen, Norway; HUP Hospital of the University of Pennsylvania, Philadelphia, PA, USA; LHMC Lahey Hospital Medical Center, Burlington, MA, USA; MRI Magnetic resonance imaging; NVB Neurovascular Bundle; PDW Proton Density-Weighted; PET Positron emission tomography; Philips Philips Healthcare, Best, the Netherlands; PI-RADS Prostate Imaging-Reporting And Data System; PSA Prostate-specific antigen; RUMC Radboud University Medical Center, Nijmegen, the Netherlands; Siemens Siemens Healthineers, Erlangen, Germany; SV Seminal vesicles; T1W T1-weighted; T2W T2-Weighted; TNCI The National Cancer Institute, Bethesda, MD, USA; TNM Tumor Node Metastasis; UCCUC The University of California Clark Urology Center, Los Angeles, CA, USA; UCL University College London, London, UK; UMCG University Medical Center Groningen, Groningen, the Netherlands; UPMC University of Pittsburgh Medical Center, Pittsburgh, PA, USA; WHSL Washington University in St. Louis, Saint Louis, MO, USA; WRUHC Western Reserve University Hospitals, Cleveland, OH, USA; ZGT Ziekenhuis Groep Twente, Twente, the Netherlands.
Overview of commercially available prostate MRI tools that implement AI. The table attempts a comprehensive comparison in terms of highest claim and level of trust based on certification level
| Number | Vendor | Product(s) name | Highest AI claim | FDA | CE |
|---|---|---|---|---|---|
| 1 | Quibim | DWI-IVIM, DCE-PKM, Texture, T2 mapping, QP-Prostate | Quantitative MR possibly reducing machine dependence and automate some report generation | Class II | Class IIa |
| 2 | Quantib | Quantib-Prostate | Automatic tumor detection that can automate some report generation | Class II | Class IIb |
| 3 | JLK | JPC-01K | Heatmap that may help spot tumors | No | Class I |
| 4 | Siemens Healthineers | Prostate MR Syngo.via, AI-Rad companion | Automatic tumor detection that can automate some report generation | Class II | Class IIb |
| 5 | Lucida | Prostate Intelligence | Automatic tumor detection that can automate some report generation | No | Class I |
| 6 | Cortechs.ai | OnQ Prostate | Heatmap that may help spot tumors | Class II | No |
| 7 | Elekta | ABAS | Automated anatomy segmentation | Class II | Not reported |
| 8 | Mirada | DLCExpert | Automated anatomy segmentation | No | Class IIb |
| 9 | MIM | MIM Maestro | Automated anatomy segmentation | Class II | Class III |
| 10 | Philips | MRCAT Prostate + Auto-Contouring | Automated anatomy segmentation | Class II | Not reported |
| 11 | General Electric | PROView DL | Automated anatomy segmentation | Class II | Not reported |
AI Artificial intelligence, CE European conformity, FDA Food and Drug Administration. For more information, check [59] for detailed descriptions of features and links to vendor websites and related information