CC BY-NC-ND 4.0 · Indian J Med Paediatr Oncol 2021; 42(06): 511-517
DOI: 10.1055/s-0041-1735577
Review Article

Artificial Intelligence: A New Tool in Oncologist's Armamentarium

Vineet Talwar
1   Department of Medical Oncology, Rajiv Gandhi Cancer Institute & Research Centre, New Delhi, India
,
Kundan Singh Chufal
2   Department of Radiation Oncology, Rajiv Gandhi Cancer Institute & Research Centre, New Delhi, India
,
Srujana Joga
1   Department of Medical Oncology, Rajiv Gandhi Cancer Institute & Research Centre, New Delhi, India
› Institutsangaben
 

Abstract

Artificial intelligence (AI) has become an essential tool in human life because of its pivotal role in communications, transportation, media, and social networking. Inspired by the complex neuronal network and its functions in human beings, AI, using computer-based algorithms and training, had been explored since the 1950s. To tackle the enormous amount of patients' clinical data, imaging, histopathological data, and the increasing pace of research on new treatments and clinical trials, and ever-changing guidelines for treatment with the advent of novel drugs and evidence, AI is the need of the hour. There are numerous publications and active work on AI's role in the field of oncology. In this review, we discuss the fundamental terminology of AI, its applications in oncology on the whole, and its limitations. There is an inter-relationship between AI, machine learning and, deep learning. The virtual branch of AI deals with machine learning. While the physical branch of AI deals with the delivery of different forms of treatment—surgery, targeted drug delivery, and elderly care. The applications of AI in oncology include cancer screening, diagnosis (clinical, imaging, and histopathological), radiation therapy (image acquisition, tumor and organs at risk segmentation, image registration, planning, and delivery), prediction of treatment outcomes and toxicities, prediction of cancer cell sensitivity to therapeutics and clinical decision-making. A specific area of interest is in the development of effective drug combinations tailored to every patient and tumor with the help of AI. Radiomics, the new kid on the block, deals with the planning and administration of radiotherapy. As with any new invention, AI has its fallacies. The limitations include lack of external validation and proof of generalizability, difficulty in data access for rare diseases, ethical and legal issues, no precise logic behind the prediction, and last but not the least, lack of education and expertise among medical professionals. A collaboration between departments of clinical oncology, bioinformatics, and data sciences can help overcome these problems in the near future.


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Introduction

Intelligence is a unique characteristic of humans that differentiates them from other species. Inspired by the complex neuronal network and its functions in human beings, the seeds of artificial intelligence (AI) were sown in the 1950s. The term AI was first coined by John McCarthy in 1956. He described it as the making of intelligent machines by combining two different fields—science and engineering. Later, it expanded to a complex interaction between various other fields such as robotics, natural language processing, and machine learning.


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Fundamentals of artificial intelligence

Artificial Intelligence (AI) requires human intelligence and is performed by a computer. An algorithmic model is developed by humans (programmers)—a code instructing the computer step by step for necessary acting, reasoning, and learning.

Machine learning (ML) is an algorithm that can learn from data and act according to this knowledge without extensive prior programming. Here, a specific task can be performed based on particular patterns and inferences. It does not need any clear instructions or any programs. Based on “training data,” a mathematical model is created and the computer can learn to make predictions. The ML model performs better with exposure to more data over time. The three main types of ML algorithms are:

  • (i) Unsupervised ML: It depends on finding patterns. Unlabeled data are given as an input, following which the system looks for patterns and classifies the data according to the identified patterns.

  • (ii) Supervised ML: It predicts algorithms based on past learning. Labeled data are already given as input; hence, the system categorizes various new given inputs based on what has been learned with old labeled data. One of the most commonly used forms of supervised learning is deep learning.

  • (iii) Reinforcement ML: It uses a system of reward and punishment for algorithmic training.

Deep learning (DL) is a subdivision of machine learning methods created on artificial neural networks. This model is built based on how a huge data/information is processed by the human brain. A well-designed and trained DL model can predict and perform classification tasks with more accuracy, which exceeds human expertise at times. In the field of medicine, AI can be divided into two branches: virtual and physical.[1]

Virtual branch of AI: It is primarily based on ML, where mathematical algorithms help improve experience-based learning. The applications of virtual AI in medicine include electronic health record (EHR) systems and neural network-based guidance in treatment decisions.

Physical branch of AI: It is the use of machines (robots) in physical form (macroscopic or microscopic) for assistance in performing daily tasks, surgeries, or delivery of chemotherapeutic drugs to a specific site.

  • (1) Carebots: These are advanced and sophisticated robots. They are used to assist surgeons during operation, as intelligent prostheses for handicapped people, and care of the elderly.

  • (2) Nanobots: They refer to miniature devices (size = 0.1–10 µm) in the form of switches, motors, shuttles, or cars carrying a particular drug or molecule. One such example is the targeted drug delivery using nanoliposomes by overcoming the permeation and diffusion barriers of the conventional therapeutic agents.


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Applications of AI in oncology

AI has been and is being explored in various fields of oncology related to histopathology, imaging, radiation oncology, medical oncology, translational oncology, and clinical decision-making as depicted in [Fig. 1].

Zoom Image
Fig. 1 Applications of artificial intelligence (AI) in oncology.

Cancer Screening

AI has found its vital place in the screening of cancers. Several convolutional neural network (CNN) models from the 2017 Kaggle Data Science Bowl demonstrated 80 to 95% accuracy for lung cancer screening by evaluation of suspicious nodules in thoracic computed tomography (CT) films.[2] In the same year, the digital mammography (DM) DREAM challenge by IBM, tested whether AI algorithms could be equal to or supplement the radiologists in interpreting mammograms. AI-based algorithms have reviewed 640,000 digital mammograms with 81% and 80% specificity and sensitivity, respectively.[3] Scott et al. assessed the performance of AI in predicting breast cancer from a large dataset of mammograms from both the USA and UK.[4] The false-positive and false-negative rates reduced by 5.7%, 1.2% (USA, UK) and 9.4%, 2.7%, respectively. An independent study was done comparing AI algorithms and the radiologist's interpretation of screening mammograms for detecting breast cancer. The AI surpassed all human readers (six radiologists): the area under the receiver operating characteristic curve (AUROC) for the AI system was greater by an absolute margin of 11.5% than that for an average radiologist.


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Cancer Diagnosis

Within the field of diagnostics, AI is gaining a pivotal role in accurate and speedy results.

Clinical Images

The CNN-trained algorithm using 130,000 skin images classified malignant lesions with higher sensitivity and specificity as compared with 21 dermatologists.[5] A 94% sensitivity in polyp detection using colonoscopy images from 1,290 patients was observed with CNN.[6]


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Radiographic Imaging

A study using a DL-based AI algorithm for the prediction of disease based on electronic health records (EHRs) of patient's clinical history, laboratory investigations, and imaging findings has been successful in this arena. In this, a novel framework called “deep patient” was developed based on a large dataset of patients' EHRs. Different patient sets with common patterns in the given data were identified. The new data were entered later and tested for its accuracy in predicting novel diseases in the next 1 year. It predicted the development of a variety of diseases including cancers of the prostate, rectum, and liver with 93% accuracy.[7] Another CNN-based model showed >85% accuracy in identifying extranodal extension (ENE) in head and neck cancers on diagnostic, contrast-enhanced CT scans.[8]

The CNNs have been able to predict both IDH mutation and MGMT methylation status with 85% to 95% and 83% accuracy, respectively, based on raw imaging data alone.[9] [10] A CNN model successfully predicted the complete response to neoadjuvant chemoradiation with 80% accuracy in locally advanced rectal cancer.[11] Additionally, a radiomics signature using extracted features from CT data and an ML algorithm were able to predict underlying CD8 cell tumor infiltration and, remarkably, response to immunotherapy for a variety of advanced cancer patients in phase 1 trials treated with anti-PD-1 or anti-PD-L1 monotherapy.[12]


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Digital Pathology

The diagnostic rates of lymph node metastasis in resected specimens of carcinoma breast using DL CNN algorithms were found to be the same as those observed in a group of pathologists.[13] Similarly, in adenocarcinoma of the prostate, a 75% rate of agreement of Gleason grading was seen between the DL algorithm and pathologists.[14] A trained CNN was developed to predict six genetic mutations (STK11, EGFR, FAT1, SETBP1, KRAS, and TP53) from lung cancer biopsies. This paved the way for predicting a genotype or mutation based on histopathologic architectural patterns.[15] These methods will be cost-effective as compared with tests for direct mutational analysis.


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Radiation Therapy

AI has been proposed for image acquisition, tumor segmentation, image registration, radiation planning, and radiation delivery—the steps during treatment workflow in radiotherapy.

Image Acquisition

CT scan is the basic imaging for getting electronic density values. It helps in the planning of radiation therapy using algorithms for the calculation of doses. However, MRI is advantageous for better soft tissue delineation and acquisition of multi-planar images. There has been continuous research in the development of methods to generate a CT scan using MRI data—a synthetic CT scan (sCT). Of these methods, deep embedding CNN has shown promising results in terms of efficiency, time consumption, high-quality image resolution, and fewer artifacts.[16] Algorithms for creating sCT from primary MRI images and for generation of radiation plan have been used in MRI only for prostate radiotherapy.[17]


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Segmentation of Tumors and Organs at Risk

Manual contouring of organs at risk (OAR) and the volume of the target is a time-consuming task with huge interobserver variability.[18] To overcome this hurdle, automatic contouring software using knowledge-based algorithms (atlas, machine learning, models based on statistical shape and appearance); region-based (adaptive thresholding, graph cuts, and contouring by watershed); or a combination of the knowledge and region-based have been used.[19] In a recent study by Lustberg,[20] the deep learning contouring outperformed the atlas-based contouring for the lungs and spinal cord. With deep learning methods, 79% of the median time was saved in comparison to manual methods. Men et al.[21] hypothesized a new deep dilated CNN-based method for target auto-segmentation and volume delineation of OAR. It took on an average 45 seconds for one patient for segmentation of all clinical target volume (CTV) and OAR which is far less time than that taken for drawing the structures conventionally.


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Image Registration

For image registration (to align an image to the reference image), mathematically applied transformations are used. The two traditional registration methods used in radiotherapy are the intensity-based method and the rigid method. In their review on newer techniques of image registration, Viergever et al[22] found the deep learning process for registration of the images to be easier and user-friendly. This has been substantiated by studies done later by Yang et al.[23] and Miao et al.[24] using DL- and CNN-based methods, respectively.


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Radiation Planning

The planning process for radiotherapy using AI algorithms was pioneered by McIntosh et al.[25] They used a voxel-based method for predicting the dose and dose-mimicking method in planning radiation for head and neck cancers. The advantage of this adaptive radiotherapy planning process is not limited to saving time but also includes dose adjustments related to age, sex, race, and genetic makeup.[26]

PORTOS is the first clinical radiogenomics assay that uses predictive biomarkers to determine the tumor sensitivity to radiation.[27]


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Radiation Delivery

The recent advances in radiotherapy such as IGRT and IMRT focus more on image-guided delivery of radiation and less on the patient's position. Positional deviation leads to dose variation and hence compromises the efficacy of the treatment. Ogunmolu et al.[28] [29] developed a soft-robot actuator for head and neck radiotherapy without using a mask to monitor intra- and interfraction movements during radiation. It showed promising results in controlling the movement of the head to within the nearest 2 mm (millimeter) as compared with the trajectory of reference. Park et al.[30] have used the data of breathing patterns for intra- and interfraction fuzzy deep learning (FDL) to decrease tumor-tracking time and adjust radiation doses in lung cancer patients according to breathing movements.


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Treatment Outcomes

In 2003, an ANN analysis was done on 125 nonsmall cell lung cancer patients to predict their 5-year survival rates based on the immunohistochemical and clinicopathological variables.[31] The ANN-based prediction model was superior to logistic regression analysis in estimating the 5-year NSCLC survival rates (87% vs. 78%). In-silico analysis using clinical and dosimetric data was also done to predict the genitourinary and lower gastrointestinal toxicity resulting from radiotherapy to prostate,[32] [33] [34] hepatobiliary toxicity after liver irradiation,[35] and rectal toxicity in cervical cancer patients receiving radiation therapy.[36]


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Translational Oncology

The utility of DL neural networks has extended even to the field of translational oncology. With advancements in biotechnology and biochemistry, there is huge information on protein structure, and protein–protein and drug-protein interactions. The structure of a protein can be predicted.[37] To speed up the drug development process, CNN and ML methods were used to predict the side effects of various drug combinations.[38] It saves time and financial resources by halting the drug development process due to serious toxicities. The cells can be characterized according to different mitotic stages [39] based on microscopy images. The progenitor cell lineage in the future can be delineated based on their microscopic images.[40] Deep learning artificial neural networks (DL ANNs) have been trained to predict the chances of failure of around 200 drugs based on transcriptomic response signatures.[41] By combining both genomic and chemical characteristics, AI can predict the sensitivity of tumor cells to therapeutics.[42] The role of AI has been extended even to immunologicals by predicting the peptide major histocompatibility complex (MHC) binding of the immunological drugs using CNNs.[43]


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Role of AI in Clinical Decision-Making

With the enormous amount of ongoing research in oncology that includes clinical trials, new drug development, and the discovery of predictive biomarkers, there is a splendid opportunity for AI to assist in data synthesis and guide us in making and taking decisions for cancer patients. More commercial applications are being developed that utilize DL and natural language processing to utilize this huge data from bench-side to bed-side.[44] International business machines (IBM) in collaboration with Watson for Oncology (WFO) used AI for linking the patient data to national treatment guidelines. The WFO demonstrated high concordance rates of the multi-disciplinary team recommendations with that of AI in breast cancer patients.[45] [46] However, the same IBM Watson cognitive computing system failed in taking the right decisions related to cancer treatment. After a huge expenditure of $62 million, the joint venture of IBM and University of Texas MD Anderson Cancer Center for the development of an advanced Oncology Expert Advisor had to be called off! Retrospection showed training with a small dataset as a cause for this failure.


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Role of AI in Hemato-Oncology

Several CNN-based models have distinguished between different white blood cells on peripheral smear with more than 95% AUROC scores.[47] Similar work is underway for the interpretation of bone marrow specimens. In patients with lymphoma, automated analysis for bone marrow involvement has been successful.[48] The risk stratification for advanced Hodgkin lymphoma based on PET-CT images was also tried with encouraging results.[49]

In malignant hematology, there are myriad clinical and laboratory-based prognostic scores for each cancer. However, there is a significant variation on a case-to-case basis. AI can deal with this complex data and help in personalized therapy. Upfront AML/MDS risk stratification can be improvised with the help of AI.[50] One of the most important poor prognostic factors after treatment completion in hematological malignancies is the detectable minimal residual disease (MRD). AI matched the human-level performance in MRD detection using flow cytometry in patients with acute myeloid leukemia.[51] A retrospective data analysis by Sasaki et al in CML-treated patients showed a longer survival rate for ML-informed treatments. Algorithm-based models in MDS predicted the response to hypomethylating agents.[52]


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Role of AI in Resource-Limited Settings

In developing countries such as India, there is a huge disparity between the numbers of patients and the numbers of health workers. A SWOT (Strengths, Weakness, Opportunities, Threat) analysis for this cutting-edge technology in developing countries is as follows:

  • Strengths: Availability of large amounts of data, emerging young population with a lot of talent and interest in this new technology, eco-friendly.

  • Weakness: High cost, lack of trained personnel, lack of standardization of data collection, storage and processing, data privacy, data security, digital divide (lack of access to high-speed broadband networks in rural areas).

  • Opportunities: Public–private partnerships, national and international collaborations, Government funding (NITI–National Institution of Transforming India, DBT–Department of Biotechnology) for the development of AI in health care settings.

  • Threats: Loss of technological and health care workers' employment, legal and ethical issues.


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Limitations of AI

This groundbreaking technology has its limitations that are hindering AI to be used in routine clinical settings.

First, the greatest hindrance is the external validation of DL applications and the generalizability of DL applications to all patients and tumors. The heterogeneous medical data across institutions and different patient populations will require multiple validation sets to prove the performance of AI. Second, access to data is a problem. It would be difficult to provide data for diseases with less prevalence. Contributing to this data scarcity, there are ethical and legal issues involved in sharing of protected information about patient's health across different institutions and also data heterogeneity along with incomplete data collection and competition between institutions. The use of findable, accessible, interoperable, reusable (FAIR) data,[53] and many other opportunities are being provided for various research groups to address this issue.[54] Third, tracing the exact logic behind the predictions of DL is a hilarious task. Hence, it is rightly called the “black box” problem, which means the explanation for how and why it gave the output based on the input given, cannot be provided by AI.[55] The era of personalized and evidence-based medicine demands a rationale for every clinical decision being taken. The specific characteristic(s) of the input data that contributed to the ultimate output cannot be pinpointed in DL algorithms. From the perspective of both practitioner and regulatory bodies, this interpretability is a challenge for adopting AI-based algorithms into the healthcare system.[56] [57] Fourth, AI in radiotherapy and pathology is mostly dependent on the images for auto-segmentation, hence quality and the number of images used for training dataset matters a lot in giving the final output. Poor-quality images and fewer images lead to faulty assessments by AI. Fifth, medical professionals lack the education and expertise required for dealing with AI-related algorithms. A collaboration between departments of clinical oncology, bioinformatics, and data science is needed to tide over this problem. Lastly, being in an initial start-up stage, the cost will be higher and institutions need financial planning accordingly.


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Conclusion

The breakthrough technology of this millennium “artificial intelligence” has a promising future in all the fields of oncology. It is a necessary tool for handling enormous clinical data, accurate delivery of treatment, improving personalized treatment selection, and predicting patient and disease outcomes.

Like any new invention, AI also has had and continues to have some hiccups, but more research into these areas can help address them. It is not surprising to say that in near future, AI will become a new “sixth sense” for every oncologist.


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Conflict of Interest

None declared.

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Address for correspondence

Srujana Joga, DNB General Medicine
Department of Medical Oncology, Rajiv Gandhi Cancer Institute & Research Centre
Rohini, Sector 5, New Delhi, 110085
India   

Publikationsverlauf

Artikel online veröffentlicht:
13. Dezember 2021

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  • References

  • 1 Hamet P, Tremblay J. Artificial intelligence in medicine. Metabolism 2017; 69: S36-S40
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Zoom Image
Fig. 1 Applications of artificial intelligence (AI) in oncology.