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Anand D. Purushotham

Researcher at King's College London

Publications -  18
Citations -  1473

Anand D. Purushotham is an academic researcher from King's College London. The author has contributed to research in topics: Breast cancer & Lymphatic system. The author has an hindex of 13, co-authored 18 publications receiving 1336 citations. Previous affiliations of Anand D. Purushotham include Guy's and St Thomas' NHS Foundation Trust.

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Terahertz pulsed spectroscopy of freshly excised human breast cancer

TL;DR: The results indicate that both TPS and TPI can be used to distinguish between healthy adipose breast tissue, healthy fibrous breast tissue and breast cancer due to the differences in the fundamental optical properties.
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Terahertz pulsed imaging of human breast tumors.

TL;DR: The potential of terahertz pulsed imaging to depict both invasive breast carcinoma and ductal carcinoma in situ under controlled conditions is demonstrated and further studies are encouraged to determine the sensitivity and specificity of the technique.
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A Novel Model of Dormancy for Bone Metastatic Breast Cancer Cells

TL;DR: Novel experimental systems are established that model the bone microenvironment of the breast cancer metastatic niche based on 3D cocultures of breast cancer cells with cell types predominant in bone marrow that will be instrumental for metastasis studies, particularly the study of cellular dormancy.
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Lymphatic drainage in the muscle and subcutis of the arm after breast cancer treatment.

TL;DR: It is proposed that some women have a defined, constitutive predisposition to secondary lymphoedema, and women with higher filtration rates, and therefore higher lymph flows through the axilla that are closer to the maximum sustainable, are at greater risk of BCRL following axillary trauma, even following removal of 1–2 nodes.
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Classification of terahertz-pulsed imaging data from excised breast tissue

TL;DR: The results indicate that under controlled conditions data reduction and SVM classification can be used with good accuracy to classify tumor and normal breast tissue.