A Systematic Review on Artificial Intelligence Evaluating Metastatic Prostatic Cancer and Lymph Nodes on PSMA PET Scans
Abstract
:Simple Summary
Abstract
1. Introduction
2. Materials and Methods
2.1. Literature Search Strategy
2.2. Eligibility Criteria
2.3. Screening and Study Selection
2.4. Quality and Risk of Bias Assessment
3. Results
3.1. Screening Process
3.2. Characteristics of Included Studies
3.3. Quality and Risk of Bias Assessment of Included Studies
3.4. AI’s Ability to Standardise Staging of PCa on PSMA PET Scans
3.5. AI’s Role in Diagnosing Metastasis Disease on PSMA Pet Scans
3.6. AI’s Role in Diagnosing Lymph Node Involvement on PSMA PET Scans
3.7. Estimating Tumour Burden and Prognosis
3.8. Assessing Treatment Response based on PSMA PET Scans
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Author and Year | Study Objective | AI Model and Study Design | PSMA Tracer Used | Inclusion Criteria | Sample Size of (Training/Validation/Test) | Data Input | Comparator | Algorithm Performance | Strength | Limitations |
---|---|---|---|---|---|---|---|---|---|---|
Nickols et al., 2021 [24] | Evaluate aPROMISE’s ability to reduce inter-reader variability of PSMA PET-CT | DL Multi-centre Retrospective | 18F- PSMA PET-CT | veterans with intermediate- or high-risk PCa who underwent PSMA scan | NR/NU/109 No cross-validation | NR | Between two nuclear medicine physicians | Cohen pairwise k-agreement for PCa staging between two readers was high (0.82 for miN0M0, 0.90 for miN1M0, 0.77 for miN0M1b.) | Moderate sample size Using external data to evaluate an existing DL software | Retrospective Selective study population (only veterans) |
Johnsson et al., 2022 [27] | Based on aPROMISE, evaluate the sensitivity of automated detection of potential lesions | DL Multi-centre Retrospective | 18F-PSMA PET-CT | 1. high-risk PCa planned for RP with PLND) 2. radiologic evidence of recurrent or metastatic PCa and considered feasible for biopsy | NR/235/295 No cross-validation | PSMA PET-CT scans annotated by experienced nuclear medicine readers for location, SUVmax, SUVpeak, SUVmean, and uptake volume. | NR | Sensitivity of detecting lesion with metastasis: 91.5% for regional lymph node 90.6% for all lymph node 86.7% for bone | Large sample size Using external data to evaluate an existing DL software | Retrospective Demographic and clinicopathological characteristics of included patients were not reported. No cross-validation |
Leung et al., 2022 [28] | Develop an ML to perform classification of PSMA uptake and correlate to PSMA-RADS | DL Multi-centre Retrospective | 18F-PSMA PET-CT | Patients who underwent 18F-PSMA PET-CT | 267 patients had 3794 lesions divided into: 2302/760/732 | Scans were segmented by four nuclear medicine physicians then CNN extracted radiomic features and tissue-type information | Probability score compared against PSMA-RADS categories on a t-SNE scatter plot | PSMA-RADS classification at lesion level AUROC 0.87 and accuracy of 0.52. Patient level AUROC 0.9 and accuracy of 0.77. Probability score of PSMA-RADS-1 and 2 was 0.19, PSMA-RADS-3 was 0.5, PSMA-RADS-4 and 5 was 0.86 | Large sample size Has both training and validation set | Retrospective Demographic and clinicopathological characteristics of included patients were not reported. Demographic and clinicopathological characteristics of included patients were not reported. |
Trägårdh et al., 2023 [29] | Develop and validate a CNN for detecting and quantifying tumour burden (TLV and TLU) of lymph node metastases and bone metastases | CNN Single-centre Retrospective | 18F-PSMA PET-CT | initial staging of high-risk prostate cancer or for the detection of sites of suspected recurrent disease. | 420/120/120 No cross-validation | One independent nuclear medicine physician segmented and annotated the scan. Three main inputs include CT image, PET image, and multi-channel organ mask | Sensitivity of nuclear medicine physicians for detecting lymph nodes (78%) and bone metastasis (59%) | Sensitivity of CNN for detecting lymph nodes (79%) and bone metastasis (62%) correlations of TLV and TLU between CNN and nuclear medicine physicians were all statistically significant and ranged from R = 0.53 to R = 0.83. | Large sample size Data set for testing separate from training data Compared to several nuclear medicine physicians | Single center The same data set is for training and validation. Demographic and clinicopathological characteristics of included patients were not reported. |
Capobianco et al., 2021 [30] | Develop and evaluate CNN to classify PSMA uptake into anatomical location and determine if it is suspicious for cancer | CNN Single-centre Retrospective | 68Ga-PSMA PET-CT | 1. Primary staging of PCa or for assessment of BCR 2. PSMA-ligand PET-CT for all other indications of PCa. | 121/NU/52 4-fold cross-validation | Nuclear medicine physician labelled PSMA uptake into anatomical location and suspicion for PCa. Data from 18F-FDG PET-CT scans was added to determine if improved CNN | Compared to nuclear medicine physician assessment | CNN had an average precision of 80.4% [CI: 71.1–87.8] for suspicious uptake identification, 77% (CI: 70.0–83.4) accuracy for anatomical classification of suspicious findings, agreement for identification of regional lymph node involvement (81%) and metastatic stage (77%) | Demonstrated combining training information from 18F-FDG PET/CT and 68Ga-PSMA-11 PET/CT led to improved accuracy | Single center Small data set for testing and no separate data set for validation Demographic and clinicopathological characteristics of included patients were not reported. |
Erle et al., 2021 [31] | Comparing and validating ML algorithms in classifying pathological uptake in PCa | ML Single-centre Retrospective | 68Ga-PSMA PET-CT | PCa patients who underwent PSMA PET-CT for either staging or treatment control | 72/NU/15 3-fold cross-validation | 77 radiomics features calculated using InterView FUSION software from 2452 manually delineated hotspots on PSMA PET-CT | Testing with a hold-out set of 15 patients | AUC = 98% Sensitivity = 97% Specificity = 82% | A detailed explanation of radiomics features used in the development | Small sample size No histopathological confirmation of metastasis |
Moazemi et al., 2020 [32] | Develop and evaluate ML algorithm in differentiating non-specific from malignant PSMA uptake | ML Single-centre Retrospective | 68Ga-PSMA PET-CT | Follow-up staging or consideration of radionuclide therapy for PCa patients who previously underwent treatment (active or systemic treatment) | 48/24/NU 5-fold cross-validation | 40 textural features calculated using InterView FUSION software from 2419 hotspots determined by nuclear medicine physicians on PSMA PET-CT | Compared to nuclear medicine physician assessment | AUC = 98% Sensitivity = 94% Specificity = 89% | A detailed explanation of radiomics features used in the development Developed and compared five different ML algorithms | Small sample size Patients underwent various treatments (hormonal versus chemotherapy versus radiotherapy) |
Kendrick et al., 2022 [25] | Develop and evaluate a CNN to extract prognostic biomarkers (TLV and TLU) from PSMA PET-CT | CNN Single-centre Prospective | 68Ga-PSMA PET-CT | BCR PCa following active treatment who received PSMA PET-CT before further surgery, radiotherapy, or systemic treatment. follow up scans 6 months later | 262 */NU/75 * 53 negative scans used as control 5-fold cross-validation | Lesions for each patient scan were manually delineated by an expert Nuclear Medicine Physician | Testing with a hold-out set of 75 patients. | Accuracy = 94.5% Sensitivity = 93.3% Specificity = 96.2% TLV and TLU from CNN were associated with overall survival (both p < 0.005) | Large sample size Prospective Used negative scans as a control | Single center |
Acar et al., 2019 [33] | Develop ML to differentiate PCa bony metastatic versus sclerotic (responded to treatment) on PSMA PET-CT | ML Single-centre Retrospective | 68Ga-PSMA PET-CT | PCa with known bone metastasis and who were previously treated | 75/NU/NU 10-fold cross-validation | Lesion marked by nuclear medicine physician on LifeX software analysis which extracted HU, 5 histogram data, 3 shape-based data, and 32 s-order textural analysis data | Results from cross-validation | AUC = 76% Accuracy = 73.5% Sensitivity = 73.5% Specificity = 73.7% Weighted KNN ML algorithm could differentiate metastasis bony from completely responded lesions | Used completely responded sclerotic lesions as control | Retrospective Small sample size |
Duriseti et al., 2023 [34] | Quantifying treatment response by correlating changes in aPROMISE PSMA score to PSA changes | CNN Site NR Retrospective | 18F-PSMA PET-CT | csPCa who underwent PSMA PET-CT before and 3 months or more after surgery, radiotherapy, and/or ADT | NR/NU/30 No cross-validation | aPROMISE was used to identify, quantify, and calculate changes in PSMA tracer avid disease | Compared to post-treatment PSMA PET-CT | Baseline prostate bed PSMA scores were correlated with baseline PSA (p < 0.001). Nodal (p = 0.53) and bony (p = 0.65) baseline PSMA scores did not correlate with baseline PSA. Changes in PSMA scores were significantly correlated with corresponding decreases in PSA for composite and nodal disease, but not for prostate bed or bony disease | Clinicopathological characteristics of included patients reported. | Small sample size No separate data set for development and testing |
Moazemi et al., 2021 [26] | Develop ML to predict response to 177Lu-PSMA treatment using Baseline PSMA-PET-CT scans and clinical parameters | ML Single-centre Retrospective | 68Ga-PSMA PET-CT | Advanced PCa scheduled for treatment with 177Lu-PSMA | 56/27/NU 3-fold cross-validation | 14 clinical parameters And 73 radiomics features were calculated using InterView FUSION software from a 2070 hotspot determined by a nuclear medicine physician on PSMA PET-CT | a permutation test (null hypothesis = permuted distribution of ground truth labels could have resulted in similar prediction scores) | AUC = 80% Sensitivity = 75% Specificity = 75% Radiomics features (PET_Min, PET_Correlation, CT_Min, CT_Busyness and CT_Coarseness) and clinical parameters such as Alp1 and Gleason score showed best correlations with change in PSA | Included clinical parameters in the development of the AI model A detailed explanation of radiomics features used in the development | Small sample size Single center |
Study | ROB | Applicability Concerns | Overall | ||||||
---|---|---|---|---|---|---|---|---|---|
Participants | Predictors | Outcome | Analysis | Participants | Predictors | Outcome | ROB | Applicability | |
Nickols et al., 2021 [24] | Low | Low | Low | Low | Low | Unclear | Unclear | Low | Unclear |
Johnsson et al., 2022 [27] | Low | Low | Low | Low | Low | Low | Low | Low | Low |
Leung et al., 2022 [28] | Unclear | Low | Low | Low | Unclear | Low | Low | Low | Low |
Trägårdh et al., 2023 [29] | Low | Low | Low | Low | Low | Low | Low | Low | Low |
Capobianco et al., 2021 [30] | Low | Low | Low | Low | High | Unclear | Unclear | Low | High |
Erle et al., 2021 [31] | Low | Low | Low | Low | Low | Low | Low | Low | Low |
Moazemi et al., 2020 [32] | Low | Low | Low | Low | Low | Low | Low | Low | Low |
Kendrick et al., 2022 [25] | Low | Low | Low | Low | Low | Low | Low | Low | Low |
Acar et al., 2019 [33] | Low | Low | Unclear | High | Low | High | Low | High | High |
Duriseti et al., 2023 [34] | Unclear | Low | Low | Low | Unclear | Unclear | Unclear | Low | Unclear |
Moazemi et al., 2021 [26] | Low | Low | Low | Low | Low | Low | Low | Low | Low |
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Liu, J.; Cundy, T.P.; Woon, D.T.S.; Lawrentschuk, N. A Systematic Review on Artificial Intelligence Evaluating Metastatic Prostatic Cancer and Lymph Nodes on PSMA PET Scans. Cancers 2024, 16, 486. https://doi.org/10.3390/cancers16030486
Liu J, Cundy TP, Woon DTS, Lawrentschuk N. A Systematic Review on Artificial Intelligence Evaluating Metastatic Prostatic Cancer and Lymph Nodes on PSMA PET Scans. Cancers. 2024; 16(3):486. https://doi.org/10.3390/cancers16030486
Chicago/Turabian StyleLiu, Jianliang, Thomas P. Cundy, Dixon T. S. Woon, and Nathan Lawrentschuk. 2024. "A Systematic Review on Artificial Intelligence Evaluating Metastatic Prostatic Cancer and Lymph Nodes on PSMA PET Scans" Cancers 16, no. 3: 486. https://doi.org/10.3390/cancers16030486
APA StyleLiu, J., Cundy, T. P., Woon, D. T. S., & Lawrentschuk, N. (2024). A Systematic Review on Artificial Intelligence Evaluating Metastatic Prostatic Cancer and Lymph Nodes on PSMA PET Scans. Cancers, 16(3), 486. https://doi.org/10.3390/cancers16030486