2023
DOI: 10.3389/fonc.2023.1117420
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The innovative model based on artificial intelligence algorithms to predict recurrence risk of patients with postoperative breast cancer

Abstract: PurposeThis study aimed to develop a machine learning model to retrospectively study and predict the recurrence risk of breast cancer patients after surgery by extracting the clinicopathological features of tumors from unstructured clinical electronic health record (EHR) data.MethodsThis retrospective cohort included 1,841 breast cancer patients who underwent surgical treatment. To extract the principal features associated with recurrence risk, the clinical notes and histopathology reports of patients were col… Show more

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Cited by 6 publications
(4 citation statements)
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“…The proposed breast cancer recurrence prediction model shows exceptional performance when compared to existing methods, like that of (Gianni et al, 2022), demonstrating substantial advantages in accuracy, precision, recall, and F1-score metrics. In comparison to the result of (Zeng et al, 2023), the infusion of additional dense layers into DCNN emerges as a pivotal element contributing to the observed superiority. A meticulous comparison with other schemes (as outlined in Table 3) shows that the DCNN method excels across various performance measures, affirming its efficacy in classification and prediction tasks.…”
Section: Resultsmentioning
confidence: 90%
“…The proposed breast cancer recurrence prediction model shows exceptional performance when compared to existing methods, like that of (Gianni et al, 2022), demonstrating substantial advantages in accuracy, precision, recall, and F1-score metrics. In comparison to the result of (Zeng et al, 2023), the infusion of additional dense layers into DCNN emerges as a pivotal element contributing to the observed superiority. A meticulous comparison with other schemes (as outlined in Table 3) shows that the DCNN method excels across various performance measures, affirming its efficacy in classification and prediction tasks.…”
Section: Resultsmentioning
confidence: 90%
“…Others, such as Osareh and Shadgar [21], Yue et al [23], Ming et al [26], Chaurasia and Pal [28], Naji et al [29], Rabiei et al [30], Nindrea et al [34], Acevedo et al [36], Santiago-Montero et al [67], have used machine learning algorithms to predict breast cancer diagnosis. Addittionally, in the same line, Ahmad et al [22], Zeng et al [31] use machine-learning strategies to predict breast cancer recurrence. Other authors, such as Yerukala Sathipati and Ho [68], had intended to predict the disease's different stages and proposed treatment strategies.…”
Section: Strategies For the Prevention And Management Of Breast Cancermentioning
confidence: 99%
“…Regarding the early detection of breast cancer, some authors in the world have been working with some sophisticated techniques and methodologies, such as the machine learning approach and others (see., e.g., Osareh and Shadgar [21], Ahmad et al [22], Yue et al [23], Ganggayah et al [24], Rajendran et al [25], Ming et al [26], Rajendran et al [27], Chaurasia and Pal [28], Naji et al [29], Rabiei et al [30], Zeng et al [31]), which has allowed them to help predict and classify different types of diagnoses, estimate the survival rate, and provide clinical follow-up to patients with breast cancer that facilitate decision making by the health team in the aid of patients. Some applications include the XAI algorithm, favoring health team knowledge and their decision making (see Idrees and Sohail [32], Rodriguez-Sampaio et al [33]).…”
Section: Introductionmentioning
confidence: 99%
“…Machine learning algorithms can identify patterns and correlations in large datasets of patient data to help predict how a patient's cancer will progress and how they will respond to different treatments [33][34][35][36] . This can help clinicians make more informed decisions about treatment options, potentially improving outcomes and saving lives 37,38 . OpenAI can also make it easier to identify patients who are at a higher risk of developing cancer or who may benefit more from certain preventive measures 16,39 .…”
Section: B Predictive Modelling For Cancer Progression and Response T...mentioning
confidence: 99%