Refine Search
Input a time range for publish date searching.
Article Types
Publication Year

Articles ( Showing 1-20 of 7 items)
Searched for: [ Keywords: "Imaging techniques" ] clear all
Review
Unravelling the application of machine learning in cancer biomarker discovery
by Carter William , Choki Wangmo  and  Anjali Ranjan
Abstract
Machine learning is playing an increasingly important role in the healthcare industry by transforming the way cancer is diagnosed and treated. By analyzing patient data, genomic data, and imaging data, machine learning algorithms can identify molecular signatures that distinguish cancer patients from healthy patients. Biomarkers that can accurately detect and diagnose cancer ca [...] Read more

Journal Article
Drug Transport via Nanocarrier for Liver Cancer Treatment
by Shafirah Hussein  and  Jaffri Ruben
Abstract
The requirement of having multiple nanocarriers (NCs) and active agents for improved therapy, imaging, and controlled release of medications efficiently in one platform has made the creation of therapeutics and theragnostic nanodrug delivery systems a difficult task for present researchers. Multiple drug resistance (MDR), a high clearance rate, severe side effects, undesirable [...] Read more

Journal Article
Recent Progress in the Transition Metal Sulfide/Phosphide for Cancer Theranostic Applications
by Xingru Zhao , Qi An  and  Jingwen Cai
Abstract
Transition metal sulfides/transition metal phosphides (TMS/TMP) has shown great potential in cancer diagnosis and treatment due to its unique structural, optical, acoustic and magnetic properties. TMS/TMP can be formed from sulfur/phosphorus source and metal into binary compounds, or from the interaction of hydrogen sulfide (or hydrogen sulfuric acid) with metal oxides or hydro [...] Read more

Review
Liver fibrosis from viral hepatitis: advances in non-invasive diagnosis
by Jincheng Wang , Jinyu Sun , Tao Qin , Xiaohan Ren , Jin Zhang  and  Xiaojie Lu
Abstract
The stages of liver fibrosis can reflect the severity of chronic viral hepatitis and the probability of liver cancer. Biopsy is still regarded as the reference for staging fibrosis, but the invasive method is not suitable for first-line screening. In recent years, noninvasive methods for detecting virus-driven liver fibrosis have been developed rapidly, which mainly include bio [...] Read more

Review
Exploring Longitudinal MRI-Based Deep Learning Analysis in Parkinson’s Patients - A Short Survey Focus on Handedness
by Yuan Gu , Ziyang Wang , Yuli Wang , Yishu Gong  and  Chen Li
Abstract
Parkinson’s Disease (PD) is a prevalent progressive neurodegenerative condition affecting millions globally. Research has found that individuals with PD have a reduced risk of certain cancers, such as colon, lung, and rectal cancers, but an increased risk of brain cancer. Therefore, there is an urgent need for the development of advanced PD diagnostic methods and for inve [...] Read more

Review
Advances in the Use of Nanomaterials in Tumour Therapy: Challenges and Prospects
by Hongmei Yang , Qiang Xie  and  Chen Li
Abstract
Nanomaterials have shown great potential in anti-tumor applications and are currently the focus of research. This review article aims to provide a comprehensive overview of the challenges encountered in oncology treatment and how nanomaterials are being utilized to overcome these obstacles. The authors discuss the limitations of conventional treatments, including limited effica [...] Read more

Journal Article
A prognostic aging-related lncRNA risk model correlates with the immune microenvironment in HCC
by Kun Mei , Zilu Chen , Qin Wang , Akbar Ali , Yan Huang  and  Luo Yi
Abstract
Background: Hepatocellular carcinoma (HCC) stands out as one of the most lethal cancers globally, given its complexity, recurrence following surgical resection, metastatic potential, and inherent heterogeneity. In recent years, researchers have systematically elucidated the significance of long non-coding RNA (lncRNA) in the initiation and progression of HCC. The intr [...] Read more
Hit Affiliation:
Center for Molecular Imaging and Nuclear Medicine, Soochow University, School of Radiological & Interdisciplinary Sciences, Soochow University (RAD-X), Suzhou, China