TURKISH JOURNAL OF ONCOLOGY 2021 , Vol 36 , Num 4
Prediction of Response to Neoadjuvant Chemoradiotherapy with Machine Learning in Rectal Cancer: A Pilot Study
Melek YAKAR1,Durmuş ETİZ1,Bartu BADAK2,Özer ÇELİK3,Deniz KÜTRİ1,Alaattin ÖZEN1,Evrim YILMAZ4
1Department of Radiation Oncology, Eskisehir Osmangazi University Faculty of Medicine, Eskisehir,-Turkey
2Department of General Surgery, Eskisehir Osmangazi University Faculty of Medicine, Eskisehir-Turkey
3Department of Mathematics and Computer, Eskisehir Osmangazi University Faculty of Arts and Sciences, Eskisehir-Turkey
4Department of Medical Pathology, Eskisehir Osmangazi University Faculty of Medicine, Eskisehir-Turkey
DOI : 10.5505/tjo.2021.2843

Summary

OBJECTIVE
In locally advanced rectal cancer, trimodality therapy comprising chemoradiotherapy, total mesorectal excision, and chemotherapy (CT) are accepted as standard treatment. However, standard "one-size-fitsall" therapy based on the TNM staging system may not be suitable for every patient. In cases with a good response, less invasive surgical treatments, such as sphincter-sparing local excision or the watch-andwait approach may be more appropriate due to their lower recurrence rates. Therefore, it is very important to predict these cases and plan treatment accordingly to ensure effective personalized treatment. Machine learning can successfully predict these cases. Aim: The aim of the study was to predict the response to neoadjuvant chemoradiotherapy with machine learning in locally advanced rectal cancer.

METHODS
The study included 125 rectal cancer cases who underwent neoadjuvant radiotherapy (RT)±CT between 2010 and 2020, and the cases with a good response (grade 0-1) according to the Modified Ryan classification were predicted using machine learning. A total of 26 variables were evaluated. After determining key variables, the dataset was divided into training/test sets at 80%/20%. Logistic regression, artificial neural network-multilayer perceptron classifier, XGBoost, support vector classification, random forest, and Gaussian Naive Bayes algorithms used to establish a prediction model. In the prediction of the group with a good response, 173 cases were created and evaluated with the synthetic minority oversampling technique method.

RESULTS
Of the 125 cases, 15 had a complete response and 33 had a good response (Modified Ryan grades 0 and 1). Six algorithms were tested in terms of their ability to predict a good response. Key variables for this prediction were found to be tumor localization, RT break time, age, gender, Karnofsky Performance Scale score, body mass index, pre- and post-treatment carcinoembryonic antigen levels, pre-treatment hemoglobin and neutrophil-to-lymphocyte ratio and platelet-to-lymphocyte ratio, radiological T and N stages, perineural and lymphatic invasion, tumor grade, radiological metastatic lymph node region, RT dose and technique, and presence and scheme of concurrent CT. The algorithm that showed the best performance was determined as logistic regression with an accuracy rate of 84% (CI: 0.69-0.98), sensitivity of 83%, and specificity of 85%.

CONCLUSION
It is very important to predict the cases with a good response and plan treatment accordingly to ensure effective personalized treatment. Machine learning can successfully predict these cases.

Introduction

In locally advanced rectal cancer, trimodality therapy comprising chemoradiotherapy (CRT), total mesorectal excision (TME), and chemotherapy (CT) are accepted as standard treatment.[1] Conventionally, the treatment algorithm is established according to the clinical and pathological TNM staging system.[1] However, standard "one-size-fits-all" therapy based on the TNM staging system may not be suitable for every patient. Treatment response and overall survival may not be similar in groups of patients receiving the same treatment at the same stage. Identifying patients at high risk of recurrence and disease-related death will also be valuable in guiding treatment. Therefore, in this complex and heterogeneous disease group, it is important to evaluate the prognosis in a personalized manner and plan the treatment accordingly.

intelligence (AI) is a branch of computer science that tries to imitate human-like intelligence in machines using computer software and algorithms without direct human stimuli to perform certain tasks. [2,3] Machine learning is a subunit of AI that utilizes data-driven algorithms that learn to imitate human behavior based on previous examples or experience.[4] Deep learning (DL) is an ML technique that uses deep neural networks (NNs) to create a model. The growth and sharing of data, increases in computing power, and developments in AI have initiated a transformation in oncology. Advances in radiation oncology and accumulated big data of an increasing number of cases have resulted in the production of a significant amount of data. There are a number of individual differences that are responsible for each patient"s disease or associated with their response to treatment and clinical outcome. The concept of personalized treatment is based on determining and using these factors for each patient. [5] The integration of such a large and heterogeneous amount of data and creation of accurate models may sometimes present with certain difficulties for the human brain and involve subjective individual differences. With machine learning, appropriate algorithms can be created and the most suitable personalized treatment for each patient can be determined at the initial stage of treatment.

In locally advanced rectal cancer, neoadjuvant CRT (n-CRT) improves local control, disease-free survival, and sphincter preservation rates.[6] However, after n-CRT, tumor regression patterns have a wide spectrum ranging from pathological complete response (pCR) to disease progression. Although cases with pCR have the best survival and tumor control, pCR is achieved using n-CRT in only 10-30% of cases with locally advanced rectal cancer.[7] Some studies have shown that cases with pCR have low recurrence rates, and therefore less invasive alternative surgical treatments, such as sphincter-sparing local excision and the watch-and-wait approach may be more appropriate for this patient population.[8-11] For this reason, identifying patients that are likely to achieve a complete or almost complete response is very important to effectively personalize treatment, refer selected cases directly to surgery without waiting, and prevent unnecessary excessive treatment/toxicity.

This study aimed to predict response to n-CRT among 125 cases who underwent this treatment at the Department of Radiation Oncology of Eskisehir Osmangazi University Faculty of Medicine between 2010 and 2020.

Methods

Patients Characteristics
Between 2010 and 2020, 127 rectal cancer cases who underwent n-CRT at the Department of Radiation Oncology of Eskisehir Osmangazi University were retrospectively evaluated. The study included patients with a histopathological diagnosis of rectal cancer, stage T3-4N0-2 or T1-4N1-2, and a Karnofsky Performance Scale (KPS) score of ≥70. Staging was performed with pelvic magnetic resonance imaging (MRI) and Positron emission tomography-computed tomography. TNM staging was undertaken according to the American Joint Committee on Cancer staging system, eighth edition.[12] After the diagnosis, all the patients were evaluated in the Oncology Council of ESOGUTF, and the treatment decision was made in a multidisciplinary manner.

Treatment Characteristics
Radiotherapy (RT) was applied to all cases as neoadjuvant. Considering the patient"s KPS score, age, and comorbidities, an evaluation for concomitant CT was made and the CT scheme was determined. As concomitant CT, continuous 5-FU (5-Fluorouracil 225 mg/m2) or capecitabine (825 mg/m2 5 days a week for 5 weeks during RT) was used. During the treatment, the cases were evaluated at least once a week in the outpatient clinic based on complete blood count and blood biochemistry and examination findings. A close follow-up of toxicity and weight was undertaken.

All the patients were immobilized in the supine position, with their arms up. Computed tomography was performed with the Somatom Definition AS® Device with a 5 mm slice interval. Pelvic MRI fusion was used to contour gross tumor volume (GTVt). In the presence of pathological lymph nodes, MRI and positron emission tomography-computed tomography fusion were used for GTVn. For the clinical target volume (CTV)high, the area of margin was selected as 2 cm for GTVt and 0.5 cm for GTVn, and mesorectum and presacral areas were included. CTVstandard was obtained by adding elective nodal areas to CTVhigh. Regional lymphatics included obturator, presacral, internal iliac, and external iliac lymph nodes (for T4 tumors only). The target volume (PTV) margin planned according to the RT technique was determined as 0.5-1 cm. The bladder, small intestines, and femoral heads were contoured as organs at risk (OARs).

The RT dose was planned as 45-54 (1.8-2 Gy/day). RT was applied with the Varian Trilogy®/TrueBeam®/ Elekta Precise® device accompanied by three-dimensional (3D) conformal RT and volumetric modulated arc therapy (VMAT). 3D conformal RT was applied to 73 cases and VMAT technique was applied to 52 cases.

Evaluation of Treatment Response
At 4 to 6 weeks after treatment, response to n-CRT was evaluated with pelvic MRI, surgery was planned 6 to 12 weeks later. The modified Ryan classification was used for response evaluation after n-CRT.[13]

ML
In this study, for the evaluation of response to n-CRT, logistic regression, artificial NN (ANN)-multilayer perceptron (MLP) classifier, XGBoost, support vector classification (SVC), random forest (RF), and gaussian naive bayes (GNB) algorithms were used.

MLP is a feed-forward class of ANN. The term MLP is sometimes loosely used to refer to any feed-forward ANN and can also refer to specific networks consisting of more than one sensor layer (with threshold activation). Multilayer sensors are called "vanilla" NNs in the spoken language, especially when they have a single hidden layer.[14] MLP consists of at least three node layers: An input layer, a hidden layer, and an output layer.

XGBoost is an optimized distributed gradient boosting library designed as a highly efficient, flexible and portable tool. XGB provides parallel tree enhancement (also known as GBDT and GBM) that quickly and accurately solves many data science problems. The same code runs in a large distributed environment (e.g., Hadoop, Sun Grid Engine, and Message Passing Interface) and can solve problems beyond billions of examples. The most important features of the algorithm are its high predictive power, its ability to prevent overlearning and manage empty data, and perform these tasks in a quick manner.[15]

SVC involves clustering the data set according to some criteria to organize the data in a more meaningful way. There are many ways to achieve this goal. Clustering can proceed by performing grouping according to a certain parametric model or based on a measure of distance or similarity, as in hierarchical clustering. A natural way of setting cluster boundaries is the use of "valleys" in regions where there is very little data in the data area; i.e., in the probability distribution of the data.[16]

RFC method has multiple estimation trees and combines each tree to depend on the randomly selected vector value equally distributed among all the trees in the forest. Thus, in RFC, a random ?k vector independent of the previous random vectors and distributed across all trees is selected, and each tree is grown using a training set and a random θk vector, resulting in an ensemble of trees.[17]

GNB classifier is one of the top 10 algorithms in data mining. GNB is a useful classifier widely used in many applications, such as text categorization, spam filtering, and data flow classification. Bayesian classifiers operate based on the Bayes rule and probability theorems.[18] A density distribution is drawn for the Gauss model of each class. The line shows the decision limit corresponding to the curve where a new point has an equal probability of being part of each class.

Logistic regression model simply uses a logistic function to model a binary dependent variable, but it is fundamentally much more complex. In regression analysis, logistic (or logit) regression estimates the parameters of a logistic model. This is a method of classifying the relationship between multiple independent variables and dependent variables. In logistic regression analysis, the probability of a dependent variable is estimated with two values. In addition, the variables in the model are continuous, which makes this technique favorable for use in classifying observations.[19]

A total of 26 variables were evaluated: Age, gender, KPS score, history of comorbidities, body mass index (BMI), tumor grade, radiological T, N, and TNM stages, radiological metastatic lymph node region, tumor localization (cm), tumor localization (lower/middle/ upper), pre-treatment carcinoembryonic antigen (CEA) level, post-treatment CEA level, pre-treatment hemoglobin, neutrophil-to-lymphocyte ratio (NLR) and platelet-to-lymphocyte ratio (PLR), RT dose (Gy), RT technique, RT break time, presence and scheme of concomitant CT, time from RT to surgery, presence of lymphatic, vascular, and perineural invasion. Key variables were selected by the permutation-based feature selection method, which is based on the evaluation of the significance of each feature separately. This technique measures changes in prediction quality (based on the coefficient of decrease in determination score) after processing in a single feature vector. The rate of decrease in the coefficient of determination shows how important a feature is.[20]

The dataset was divided into training and test sets at 80% and 20%, respectively. Models were created using the training set and verified using the test set. The optimal model was selected according to the receiver operating characteristic curves. Cross validation is a model validation technique that tests what result a statistical analysis will yield in an independent dataset. The main use of this technique is to predict the accuracy of a predictive system in practice. In a prediction problem, the model is usually trained with a "known dataset" (training set) and tested with an unknown dataset (verification or test set), which is also known as supervised learning. The purpose of this test is to measure the generalizability of the trained model to new data and identify problems of overfitting or selection bias.[21] In the current study, five-fold cross validation was performed.

The dataset contained 15 cases evaluated to have a complete response and 33 cases with a good response (modified Ryan classification grades 0 and 1). In an unbalanced dataset, the model predicts in favor of the group with a higher number of samples, which results in overfitting. In statistics, overfitting refers to a produced analysis aligning too closely to a certain dataset (memorization), which leads to the inability to adapt to new data that are not included in this dataset, and to eliminate the possibility of this problem, a balanced dataset should be used.[22] In the synthetic minority oversampling technique (SMOTE),[23] the class type with an unbalanced data distribution is artificially replicated, and thus balancing is achieved. In the current study, for the evaluation of cases with a complete response, the samples belonging to the minority class type was multiplied using SMOTE. The dataset was divided into training (80%) and test (20%) sets, with 100 cases being included in the training group (26 with and 74 without good response) and 25 (7 with and 18 without good response) in the test group. The training group was oversampled with SMOTE, resulting in 148 cases, of which 74 did not have a good response and 74 had a good response.

Statistical analysis was performed and ML algorithms were run using Python software (Python Software Foundation. Python Language Reference, version 3.5. Available from http://www.python.org) and Scikit- Learn library. All analyses and operations were undertaken on a computer with the specifications of Intel Core i7-9750 CPU 2.6 GHz 12MB Cache and 16GB 2666 MHz DDR4 RAM memory running 64-bit Windows 10 operating system.

Results

Patient, Tumor, and Treatment Characteristics
For the prediction of cases with a good response, 125 cases were used and SMOTE was applied. The median age was 61 (min: 23, max: 85) years, and the male/female ratio was 86/39. Patient and tumor characteristics are given in Table 1. The median RT dose was 50.4 (min: 45, max: 54) Gy. The median RT break time was 2 (min: 0, max: 18) days. Concomitant CT was performed in 106 cases and adjuvant CT in 110 cases. Treatment characteristics are given in Table 2.

Table 1: Patient and tumor characteristics

Table 2: Treatment characteristics

Treatment Response
The modified Ryan classification was used for response prediction, and the number of cases with grades 0, 1, 2, and 3 was 15 (12.0%), 18 (14.4%), 80 (64.0%), and 12 (9.6%), respectively.

Results of ML
Of the 26 variables, ten were determined as important using the permutation-based feature selection method: Tumor localization, RT break time, age, gender, KPS score, BMI, pre- and post-treatment CEA levels, pretreatment hemoglobin, NLR and PLR values, radiological T and N stages, perineural and lymphatic invasion, tumor grade, radiological metastatic lymph node area, RT dose and technique, and presence and scheme of concomitant CT. The feature importance graph is given in Figure 1a. The algorithm that showed the best performance was determined as logistic regression with an accuracy rate of 84% (confidence interval: 0.69-0.98) and area under the curve (AUC) value of 0.84. After SMOTE was applied to the dataset of 125 cases, 148 cases were used for training and 25 for testing. In the test stage, the logistic regression algorithm accurately predicted six of the seven cases with a good response, and 15 of the 18 cases without a good response. The AUC graph of the algorithms is given in Figure 1b. The accuracy rates of the algorithms are given in Table 3, and the confusion matrix of the logistic regression algorithm is presented in Table 4.

Fig 1: Feature importance plot for the prediction of cases with a good treatment response (a), AUC graph of algorithms (b).
CEA: Carcinoembryonic antigen; NLR: Neutrophil-tolymphocyte ratio; PLR: Platelet-to-lymphocyte ratio; BMI: Body mass index; RT: Radiotherapy; VMAT: Volumetric modulated arc therapy; KPS: Karnofsky performance scale; r: Radiological; CT: Chemotherapy; ROC: Receiver operating characteristic; ANN: Artificial neural network; SVC: Support vector classification; AUC: Area under curve.

Table 3: Algorithms used in the prediction of complete or good response

Table 4: Confusion matrix of the best-performing algorithm

Discussion

n-CRT followed by TME is currently the standard treatment for locally advanced rectal cancer. Following n-CRT, approximately 10-30% of patients achieve pCR.[7] For these patients no longer having invasive cancer, the question is whether they need TME because this invasive surgical method is associated with significant complications and morbidity.[8,24] Several studies have shown that patients with pCR have low local recurrence rates, and thus less invasive, alternative surgical therapies, such as sphincter-sparing local excision or the watch-and-wait approach are gaining more popularity among these patients.[8] There is a need to confirm pCR by surgery, and if these cases can be predicted in advance, less aggressive surgery can be performed. Similarly, less invasive surgical methods can be used in cases that have a good response to treatment. This possible prediction can significantly reduce health-care costs in the treatment of rectal cancer.

With the early detection and prediction of their response to treatment and following a personalized treatment approach, patients can be divided into different prognostic groups. Of the patients with locally advanced rectal cancer that has undergone n-CRT and surgery, 45% will require permanent colostomy. Identifying those with a complete or good clinical response and good response before surgery will allow for the optimization of the surgical approach with "organ-sparing" procedures, resulting in a reduction in surgical morbidity. In addition, among patients diagnosed with locally advanced rectal cancer, the early detection of those with a poor response to n-CRT will offer the opportunity to directly move on to surgery, thus avoiding morbidities associated with n-CRT or intensified treatment regimen.[25]

In a study conducted with 696 patients with Stage I-III rectal cancer, Cai et al.[26] determined tumor size and pre-treatment CEA to be poor prognostic factors. Bacha et al.[27] evaluating 44 patients with locally advanced rectal cancer, accepted age as a factor affecting response to treatment. In the current study, the CEA level and age were accepted as key variables.

In a study conducted with 248 patients diagnosed with locally advanced rectal cancer who underwent n-CRT, Huang et al.[28] performed pCR prediction using patient and treatment characteristics. The authors obtained the highest accuracy rate from the ANN algorithm at 88%. Key variables were accepted as post-treatment CEA value, time from RT to surgery, CT scheme, and clinical N and T stages. In the current study, post-treatment CEA level, time from RT to surgery, CT scheme, radiological N and T stages were found to be key variables, and the best-performing algorithm was determined as logistic regression with an accuracy rate of 84% in predicting a good response.

Imaging methods have also been used for pCR prediction.[19,29-32] Shayesteh et al.[25] included 98 cases diagnosed with rectal cancer in their sample and performed MRI 1 week before CRT to extract radiomics such as density, shape, and tissue features. The authors used 53 cases for training and 45 for validation. They used the SVM, BN, NN, and K nearest neighbor (KNN) algorithms both individually and together to evaluate their ability to predict response to n-CRT using AUC. When the algorithms were evaluated separately, the best result was obtained from the BN algorithm with the AUC value and accuracy rate of 0.75 and 80.9%, respectively. When the algorithms (SVM, NN, BN, and KNN) were evaluated together, the AUC and accuracy values were 0.97 and 92.8%, respectively. The authors suggested that the prediction process could be improved when algorithms were used as hybrid. In a study including 95 patients diagnosed with T2-4N0-1 rectal cancer, radiomics were obtained from the computed tomography images taken before CRT (1683 radiomic features per case) together with clinical and treatment data, and response prediction was made with AI.[32] In the creation of prediction models, the deep NN (DNN) and SVM algorithms were combined with radiomics while only TNM staging was added to linear regression (LR). pCR was achieved in a total of 23 cases. The accuracy rates of the DNN, SVM, and LR algorithms were reported as 80.0%, 71.5%, and 69.5%, respectively.

In the literature, there are very few studies that predict good response to n-CRT based on patient, tumor and treatment characteristics, and such prediction evaluations have mostly been undertaken using imaging methods and radiomics. However, response rates are also related to patient and treatment characteristics. In the current study, a prediction model was created using not only patient and treatment but also tumor characteristics. An accurate classification of cases with a good response could help determine less invasive therapeutic strategies, such as sphincter-sparing surgery, mucosectomy, or the wait-watch approach. In addition, the prediction of cases that do not respond to n-CRT would allow for these patients to be referred to more effective treatments and thus significantly reduce unnecessary health expenses.

The limitations of the study are the small number of cases, the inclusion of metastatic (single liver metastasis) cases and being a single-center study. Prediction software obtained in such studies has not yet entered into routine treatment use, and it is not clear which health authorities can give their ethical approval. The strengths of the study are the inclusion of patient, tumor, and treatment characteristics in the algorithm. In addition, this study is important in terms of forming the basis for the decisions to be taken about the patient in the next oncology councils.

Conclusion

In recent years, the increasing interest in AI in all fields of science has also led to the development of innovative tools in oncology. The development of prediction tools with a wide variety of variables and models help plan personalized treatments. Using such prediction models, rectal cancer groups that will respond well to n-CRT can be identified to use less invasive methods while surgical treatments can be applied to cases predicted to be unresponsive to n-CRT to improve their oncological outcomes.

Peer-review: Externally peer-reviewed.

Conflict of Interest: All authors declared no conflict of interest.

Ethics Committee Approval: The study was approved by the Eskisehir Osmangazi University Non-Invasive Clinical Research Ethics Committee (No: 25, Date: 30/03/2021).

Financial Support: None declared.

Authorship contributions: Concept - D.E., M.Y., Ö.Ç., B.B.; Design - D.E., M.Y., Ö.Ç., B.B.; Supervision - D.E., M.Y., A.Ö., B.B., E.Y.; Funding - D.E., M.Y., A.Ö., B.B., E.Y.; Materials - D.E., M.Y., B.B., D.K., E.Y.; Data collection and/ or processing - D.E., M.Y., Ö.Ç., D.K., E.Y.; Data analysis and/or interpretation - D.E., M.Y., Ö.Ç., D.K.; Literature search - D.E., M.Y., B.B., D.K.; Writing - D.E., M.Y.; Critical review - D.E., M.Y., Ö.Ç., A.Ö., E.Y.

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