Enhancing Drug Discovery: Quantum Machine Learning for QSAR Prediction with Incomplete Data
- URL: http://arxiv.org/abs/2501.13395v1
- Date: Thu, 23 Jan 2025 05:39:08 GMT
- Title: Enhancing Drug Discovery: Quantum Machine Learning for QSAR Prediction with Incomplete Data
- Authors: Wei-Yin Chiang, Po-Yu Kao, Tzu-Lan Yeh, Ya-Chu Yang, Yen-Chu Lin, Alex Zhavoronkov,
- Abstract summary: It has been demonstrated that QSAR can be accurately predicted by machine learning.
Data with poor quality and limited availability are always the most common and critical issues for medical-related applications for machine learning.
We try to demonstrate the quantum advantages in the generalization power of the quantum classifier under conditions of limited data availability and a reduced number of features.
- Score: 0.0
- License:
- Abstract: Qualitative structure-activity relationship (QSAR) is important for drug discovery and offers valuable insights into the biological interactions of potential drug candidates. It has been demonstrated that QSAR can be accurately predicted by machine learning. However, data with poor quality and limited availability are always the most common and critical issues for medical-related applications for machine learning. In this manuscript, we aim to discuss the performance of classical and quantum classifiers in QSAR prediction and attempt to demonstrate the quantum advantages in the generalization power of the quantum classifier under conditions of limited data availability and a reduced number of features. By applying different data embedding methods followed by feature selection through principal component analysis (PCA), we find that the quantum classifier outperforms the classical one when a small number of features are selected and the number of training samples is limited. The generality of quantum advantages in other open datasets is also explored.
Related papers
- Robust Quantum Reservoir Computing for Molecular Property Prediction [0.5399129278613575]
We propose the quantum reservoir computing (QRC) approach to predict the biological activity of potential drug molecules.
We observe more robust QRC performance as the size of the dataset decreases.
In addition, we leverage the uniform manifold approximation and projection technique to analyze structural changes as classical features are transformed through quantum dynamics.
arXiv Detail & Related papers (2024-12-09T18:49:18Z) - Leveraging Pre-Trained Neural Networks to Enhance Machine Learning with Variational Quantum Circuits [48.33631905972908]
We introduce an innovative approach that utilizes pre-trained neural networks to enhance Variational Quantum Circuits (VQC)
This technique effectively separates approximation error from qubit count and removes the need for restrictive conditions.
Our results extend to applications such as human genome analysis, demonstrating the broad applicability of our approach.
arXiv Detail & Related papers (2024-11-13T12:03:39Z) - Empirical Quantum Advantage Analysis of Quantum Kernel in Gene Expression Data [0.0]
We focus on constraints like finding suitable datasets where quantum advantage is achievable and evaluating the relevance of features chosen by classical and quantum methods.
For our experimental validation, we selected the gene expression dataset, given the critical role of genetic variations in regulating physiological behavior and disease susceptibility.
arXiv Detail & Related papers (2024-11-11T15:34:53Z) - Machine Learning and Quantum Intelligence for Health Data Scenarios [0.0]
Traditional machine learning algorithms often face challenges in high-dimensional or limited-quality datasets.
Quantum Machine Learning leverages quantum properties, such as superposition and entanglement, to enhance pattern recognition and classification.
This paper explores QML's application in healthcare, focusing on quantum kernel methods and hybrid quantum-classical networks for heart disease prediction and COVID-19 detection.
arXiv Detail & Related papers (2024-10-28T01:04:43Z) - Quantum enhanced stratification of Breast Cancer: exploring quantum expressivity for real omics data [0.0]
Quantum Kernels (QK) could effectively classify subtypes of Breast Cancer (BC) patients on the basis of molecular characteristics.
Our results show that QKs yield comparable clustering results with classical methods while using fewer data points.
We found that less expressive encodings showed a higher resilience to noise, indicating that the computational pipeline can be reliably implemented on the NISQ devices.
arXiv Detail & Related papers (2024-09-21T10:00:09Z) - Benchmarking quantum machine learning kernel training for classification tasks [0.0]
This study focuses on quantum kernel methods in the context of classification tasks.
It examines the performance of Quantum Kernel Estimation (QKE) and Quantum Kernel Training (QKT) in connection with two quantum feature mappings.
Experimental results indicate that quantum methods exhibit varying performance across different datasets.
arXiv Detail & Related papers (2024-08-17T10:53:06Z) - QKSAN: A Quantum Kernel Self-Attention Network [53.96779043113156]
A Quantum Kernel Self-Attention Mechanism (QKSAM) is introduced to combine the data representation merit of Quantum Kernel Methods (QKM) with the efficient information extraction capability of SAM.
A Quantum Kernel Self-Attention Network (QKSAN) framework is proposed based on QKSAM, which ingeniously incorporates the Deferred Measurement Principle (DMP) and conditional measurement techniques.
Four QKSAN sub-models are deployed on PennyLane and IBM Qiskit platforms to perform binary classification on MNIST and Fashion MNIST.
arXiv Detail & Related papers (2023-08-25T15:08:19Z) - ShadowNet for Data-Centric Quantum System Learning [188.683909185536]
We propose a data-centric learning paradigm combining the strength of neural-network protocols and classical shadows.
Capitalizing on the generalization power of neural networks, this paradigm can be trained offline and excel at predicting previously unseen systems.
We present the instantiation of our paradigm in quantum state tomography and direct fidelity estimation tasks and conduct numerical analysis up to 60 qubits.
arXiv Detail & Related papers (2023-08-22T09:11:53Z) - Transition Role of Entangled Data in Quantum Machine Learning [51.6526011493678]
Entanglement serves as the resource to empower quantum computing.
Recent progress has highlighted its positive impact on learning quantum dynamics.
We establish a quantum no-free-lunch (NFL) theorem for learning quantum dynamics using entangled data.
arXiv Detail & Related papers (2023-06-06T08:06:43Z) - Problem-Dependent Power of Quantum Neural Networks on Multi-Class
Classification [83.20479832949069]
Quantum neural networks (QNNs) have become an important tool for understanding the physical world, but their advantages and limitations are not fully understood.
Here we investigate the problem-dependent power of QCs on multi-class classification tasks.
Our work sheds light on the problem-dependent power of QNNs and offers a practical tool for evaluating their potential merit.
arXiv Detail & Related papers (2022-12-29T10:46:40Z) - A didactic approach to quantum machine learning with a single qubit [68.8204255655161]
We focus on the case of learning with a single qubit, using data re-uploading techniques.
We implement the different proposed formulations in toy and real-world datasets using the qiskit quantum computing SDK.
arXiv Detail & Related papers (2022-11-23T18:25:32Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.