速報APP / 教育 / Ovarian Tumor Pathology

Ovarian Tumor Pathology

價格:免費

更新日期:2019-02-11

檔案大小:605 MB

目前版本:1.01

版本需求:需要 iOS 9.0 或以上版本。與 iPad 相容。

支援語言:英語

Ovarian Tumor Pathology(圖1)-速報App

Volume 5 in the Series: The Johns Hopkins Atlases of Pathology

AUTHORS: Emanuela F. T. Veras, Ayse Ayhan, Tsui-Lien Mao, Marissa J. White, and Norman J. Barker

Ovarian Tumor Pathology(圖2)-速報App

SERIES EDITORS: Toby C. Cornish, Norman J. Barker, and Ralph H. Hruban

The Johns Hopkins Atlas of Ovarian Tumor Pathology is the fifth teaching app in our series from the Johns Hopkins University Department of Pathology. This app provides an easily accessible atlas with as many as possible images on each specific entity, common and rare documented variations on every neoplasm, along with succinct, explanatory descriptions that would aid the novice in the field as well as the experienced professional to arrive at the correct diagnosis. Although the focus of this work is on neoplastic ovarian lesions, we have also included selected examples of non-neoplastic entities and normal ovarian structures we deem as important to recognize.

Ovarian Tumor Pathology(圖3)-速報App

This app follows the format presented in previous atlases of this series. It is composed of four modules: an interactive teaching algorithm, a searchable image atlas, an image-based quiz, and a flash card module.

The image atlas contains over 1600 high resolution color images with expertly-authored captions. These microscopic, macroscopic and radiographic images can be viewed together or separately, and two entities can be compared, side-by-side. The atlas can be viewed by diagnosis or by features (these features re-enforce the diagnostic features used in the algorithm), and the atlas can be searched using a key word search. You can create your own albums and add images you select from from the atlas to these albums. The flash cards module allows you to view a randomly generated assortment of images from the image bank and subsequently view the diagnosis and caption by simply “flipping” the card over.

Ovarian Tumor Pathology(圖4)-速報App

For our teaching algorithm, we present the reader with our general approach to the challenging mucinous tumors of the ovary. This module consists of sequential steps, including approach to the gross (laterality/size)/microscopic characteristics (stratified/non-stratified epithelium) and immunohistochemical profiles of primary and the most common secondary mucinous tumors to the ovary, each step prompting the selection of one out of two presented options, until a final diagnosis is reached.

We welcome your feedback. Please e-mail Dr. Hruban at rhruban@jhmi.edu. If you find an error, please let us know so we can correct it.

Ovarian Tumor Pathology(圖5)-速報App

支援平台:iPad