| Literature DB >> 35566555 |
Stephanie Taha-Mehlitz1, Silvio Däster1, Laura Bach2, Vincent Ochs3, Markus von Flüe1, Daniel Steinemann1, Anas Taha4.
Abstract
OBJECTIVE: The use of machine learning (ML) has revolutionized every domain of medicine. Surgeons are now using ML models for disease detection and outcome prediction with high precision. ML-guided colorectal surgeries are more efficient than conventional surgical procedures. The primary aim of this paper is to provide an overview of the latest research on "ML in colorectal surgery", with its viable applications.Entities:
Keywords: Cochrane library; Google Scholar; PubMed database; colorectal surgery; machine learning
Year: 2022 PMID: 35566555 PMCID: PMC9100508 DOI: 10.3390/jcm11092431
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.964
Summary of included articles.
| Authors | ML Algorithm | Study Design and Summary |
|---|---|---|
| Hashimoto, et al. [ | - | Surgeons are the most significant enablers of ML adoption. Computer Vision and Natural Language Processing are popular subfields of AI used to derive insights. Review on ML in colorectal surgery. |
| Beyaz [ | ROBODOC | ML in surgery began in 1992. The paper described the development of ML in surgery and the problems surgeons have had implementing ML in their practice. |
| Kitaguchi et al. [ | convolutional neural network (CNN) | Automated colorectal surgery workflow recognition using a CNN to identify surgical stages and diagnosis of surgical actions with 82% accuracy. |
| Wang et al. [ | FR-CNN | ML in colorectal surgery has received a lot of interest. Authors worked on ML-assisted pathological biopsy. CNN efficient in managing colorectal cancer. |
| Park et al. [ | AI Real-time Analysis Microperfusion | To create an ML-based real-time analytic model for indocyanine green angiography during colorectal surgery. AIRAM model accuracy and consistency higher compared to traditional approaches. |
| Mitsala et al. [ | CNN | Use of CNN in diagnosing, screening, and treating colorectal cancer. Performing analysis on medical images with the help of CNN. |
| Wang and Dong [ | C-CAD | C-CAD is effective in the detection of colorectal adenomas and cancer. |
| Merath et al. [ | DT | DT algorithms predict the occurrence of complications after colorectal surgery. Complications were predicted in 13 of 17 instances. |
| Yamashita et al. [ | MSINet Model | The authors used ML in their approach by developing a deep learning model titled MSINet, which was found to be successful in forecasting MSI in colorectal cancer patients. |
| Echle et al. [ | ShuffleNet | ShuffleNet is a deep learning system designed to detect MSI in patients with colorectal cancer. The study found this model to be accurate in predicting MSI in colorectal cancer. |
| Ahmad et al. [ | CNN | CNN is now the most often utilised strategy in colorectal surgery, according to the authors. Many scholars have proposed using image magnification ML algorithms in clinical practice. |
| Skrede et al. [ | Deep Learning (DL) | ML-based prognostic markers effectively classified colorectal cancer patients into two phases, allowing surgeons to choose appropriate treatment while avoiding overtreatment of low-risk patients. |
| Kudo et al. [ | ANN | ANN effectively recognized patients with T1 colorectal cancer with lymph node metastases to identify individuals who require additional surgery following endoscopic resection. |
| Yuan et al. [ | Residual Networks + SVM (Support Vector Machine) | ResNet + SVM classifier can detect synchronous peritoneal carcinomatosis in colorectal cancer. The model gave 94% accuracy rate. |
| Ichimasa et al. [ | Machine Learning (ML) | The use of ML in colorectal cancer surgery gives a successful prediction, lowering the need for additional procedures after endoscopic resection of T1 tumors. |
| Loftus et al. [ | ML | The use of ML in colorectal cancer improves decision-making by augmenting informed consent and the choice to operate. ML-based electronic health also records algorithms. |
| Hildebrand et al. [ | CNN | CNN predicts immunotherapy responses for cancer patients and detects microsatellite instability. |
| Luo et al. [ | ML | ML-automated polyp detection system could increase polyp detection rate. Increasing the use of ML in colorectal surgery can minimize surgeon load while maintaining service efficiency. |
| Wang, Deng, and Wu [ | CNN | ML models can also use magnetic resonance imaging (MRI) results as inputs. This has been proved effective in predicting the responses of various patients towards chemotherapy with an accuracy rate of 95%. |
| Chen et al. [ | DL | Humans, unlike computers, cannot detect algorithmic patterns. However, most ML methods need complicated processing, making data extraction tedious. Although, DL and alternative learning strategies for retrospective real-world clinical data have proved to be a boon. |
| Hardy et al. [ | CNN | CNN models are efficienct in diagnosing, screening, and treating colorectal cancer. This suggests that researchers will likely improve colorectal cancer detection technologies to aid in successful treatment. |
| Shung and Byrne [ | CNN | CNN have enhanced the quality of colonoscopy processes and also helped in cancer screening. |
| Gao et al. [ | FR-CNN | FR-CNN allows to detect malignancies and recommend treatment options which is effective in diagnosing colorectal cancer. |
| McKendrick et al. [ | ML | ML encourages the development of mixed tech but more ML algorithms will need to be developed and improved. |
| Dias, Shah, and Zenati [ | ML | ML through high tech operating rooms supports cognitive augmentation during surgical care. The future success of technological integration will be determined by how we handle data security and privacy. |
| Kim [ | ML | Future aspects and advancements of ML are discussed in detail by the author, one of them being ML-based medical treatments to colorectal patients. |
| Ramesh et al. [ | ANN | Studies on the future of ML demonstrated that ML algorithms like ANN are more effective than surgeons in detecting colorectal cancer. |
Figure 1Identification of studies. Inclusion and exclusion criteria adopted for this research.