Test your knowledge on Applications of Artificial Intelligence and Big Data Analytics in Orthodontics (Graber 7th Edition, Chapter 9) with these 30 high-yield MCQs.
Click to Reveal Answer
Correct Answer: B
Explanation: Machine Learning is the specific subset of AI where computers learn patterns from data without being explicitly programmed for every specific rule.
Click to Reveal Answer
Correct Answer: B
Explanation: CNNs are designed to process pixel data and are the gold standard in deep learning for image segmentation, classification, and landmark identification in radiographs.
Click to Reveal Answer
Correct Answer: B
Explanation: While AI is not error-free, its main clinical benefits are the drastic reduction in time required for analysis and the reproducibility (consistency) of the results, reducing inter-examiner variability.
Click to Reveal Answer
Correct Answer: A
Explanation: The defining characteristics of Big Data are high Volume (amount of data), high Velocity (speed of data generation), and high Variety (different types of structured and unstructured data).
Click to Reveal Answer
Correct Answer: B
Explanation: Segmentation (separating teeth from bone or soft tissue) is traditionally the most time-consuming part of 3D analysis. AI algorithms can automate this process with high accuracy.
Click to Reveal Answer
Correct Answer: B
Explanation: ANNs consist of interconnected nodes (neurons) that process information in layers, mimicking the synaptic connections and transmission of the human brain.
Click to Reveal Answer
Correct Answer: B
Explanation: AI models trained on thousands of treated cases can identify patterns and suggest extraction/non-extraction plans that align with successful past outcomes, serving as a second opinion for the clinician.
Click to Reveal Answer
Correct Answer: B
Explanation: These systems use AI to screen photos/videos taken by the patient for specific issues like aligner unseating, broken brackets, or poor hygiene, alerting the clinician only when intervention is needed.
Click to Reveal Answer
Correct Answer: B
Explanation: Deep Learning eliminates the need for manual feature extraction. The "Deep" refers to the many hidden layers in the neural network that learn complex features directly from raw data (like pixels).
Click to Reveal Answer
Correct Answer: B
Explanation: Supervised learning involves training a model on a dataset where the "correct answer" (label) is provided, such as showing the AI an x-ray and telling it "this is point A".
Click to Reveal Answer
Correct Answer: A
Explanation: Manual grading is subjective and prone to calibration drift. AI provides a standardized, objective measurement of outcome indices (alignment, contacts, inclination).
Click to Reveal Answer
Correct Answer: B
Explanation: The "Black Box" nature of some advanced AI models means it is difficult to understand *how* the AI arrived at a specific decision, which can be a barrier to trust and clinical acceptance.
Click to Reveal Answer
Correct Answer: B
Explanation: AI algorithms can analyze the geometry of the 3D models to determine the most efficient orientation (nesting) and generate the minimal necessary support structures for printing.
Click to Reveal Answer
Correct Answer: B
Explanation: AI can analyze massive genomic datasets to find correlations between specific genetic markers (SNPs) and clinical phenotypes like Class III growth tendency or risk of External Apical Root Resorption (EARR).
Click to Reveal Answer
Correct Answer: B
Explanation: Data mining involves using statistical and AI techniques to uncover hidden patterns, correlations, and trends within large datasets that would not be visible to human analysis.
Click to Reveal Answer
Correct Answer: B
Explanation: Computer Vision enables computers to "see" and interpret visual information from digital images or videos, making it essential for cephalometrics, facial analysis, and intraoral scanning.
Click to Reveal Answer
Correct Answer: B
Explanation: This is a Classification task because the AI is categorizing the input image into discrete classes (e.g., CS1, CS2, CS3, etc.) based on the shape of the vertebrae.
Click to Reveal Answer
Correct Answer: B
Explanation: AI optimizes the staging (segmentation of movement) to ensure forces are applied efficiently and do not exceed the biological threshold for safe tooth movement, reducing the need for refinements.
Click to Reveal Answer
Correct Answer: C
Explanation: The Test set is a separate portion of data held back during training. It is used only at the end to provide an unbiased evaluation of the final model's performance on unseen data.
Click to Reveal Answer
Correct Answer: B
Explanation: AR overlays digital information (like the post-treatment smile simulation) onto the real-world view (the patient's face in a mirror or camera), enhancing patient communication and motivation.
Click to Reveal Answer
Correct Answer: B
Explanation: Aggregating massive amounts of patient health data raises significant concerns about anonymity, consent, and the risk of data breaches (security), which must be strictly managed (e.g., HIPAA compliance).
Click to Reveal Answer
Correct Answer: A
Explanation: The AI identifies specific geometric patterns and ratios in the face (Pattern Recognition) that match known databases of syndromic features, aiding in early diagnosis.
Click to Reveal Answer
Correct Answer: B
Explanation: NLP is the branch of AI that helps computers understand, interpret, and manipulate human language. It is used to mine clinical notes, research papers, and patient feedback.
Click to Reveal Answer
Correct Answer: B
Explanation: AI automates the "segmentation" (identifying individual tooth boundaries) and suggests an ideal arch form setup, which the technician or orthodontist then refines.
Click to Reveal Answer
Correct Answer: A
Explanation: The layers between the input and output are called "Hidden Layers". Deep learning models have many hidden layers where the complex processing and feature extraction occur.
Click to Reveal Answer
Correct Answer: A
Explanation: Overfitting occurs when an AI learns the "noise" or specific details of the training set too well, making it unable to generalize to new patients (poor predictive validity).
Click to Reveal Answer
Correct Answer: B
Explanation: Scanners (structured light or laser) capture the geometry of the dentition, creating the STL/PLY files that serve as the input "Big Data" for orthodontic AI applications.
Click to Reveal Answer
Correct Answer: A
Explanation: AI software in digital IDB workflows calculates the optimal bracket placement on the virtual tooth to achieve the desired tip, torque, and in-out, creating a transfer tray for clinical use.
Click to Reveal Answer
Correct Answer: B
Explanation: By analyzing vast amounts of data (genetic, morphological, treatment response), AI enables "Precision Medicine" (or Orthodontics), tailoring the treatment specifically to the individual patient's unique biological and anatomical characteristics.
Click to Reveal Answer
Correct Answer: B
Explanation: Such systems are designed to augment the clinician's capabilities (CDSS), alerting them to early signs of demineralization that might be missed, but leaving the final diagnosis and treatment decision to the human.
Comments
Post a Comment
Add Your Comments or Feedback Here